InvokeAI/ldm/generate.py
Lincoln Stein 0f4d71ed63
Merge dev into main for 2.2.0 (#1642)
* Fixes inpainting + code cleanup

* Disable stage info in Inpainting Tab

* Mask Brush Preview now always at 0.5 opacity

The new mask is only visible properly at max opacity but at max opacity the brush preview becomes fully opaque blocking the view. So the mask brush preview no remains at 0.5 no matter what the Brush opacity is.

* Remove save button from Canvas Controls (cleanup)

* Implements invert mask

* Changes "Invert Mask" to "Preserve Masked Areas"

* Fixes (?) spacebar issues

* Patches redux-persist and redux-deep-persist with debounced persists

Our app changes redux state very, very often. As our undo/redo history grows, the calls to persist state start to take in the 100ms range, due to a the deep cloning of the history. This causes very noticeable performance lag.

The deep cloning is required because we need to blacklist certain items in redux from being persisted (e.g. the app's connection status).

Debouncing the whole process of persistence is a simple and effective solution. Unfortunately, `redux-persist` dropped `debounce` between v4 and v5, replacing it with `throttle`. `throttle`, instead of delaying the expensive action until a period of X ms of inactivity, simply ensures the action is executed at least every X ms. Of course, this does not fix our performance issue. 

The patch is very simple. It adds a `debounce` argument - a number of milliseconds - and debounces `redux-persist`'s `update()` method (provided by `createPersistoid`) by that many ms.

Before this, I also tried writing a custom storage adapter for `redux-persist` to debounce the calls to `localStorage.setItem()`. While this worked and was far less invasive, it doesn't actually address the issue. It turns out `setItem()` is a very fast part of the process.

We use `redux-deep-persist` to simplify the `redux-persist` configuration, which can get complicated when you need to blacklist or whitelist deeply nested state. There is also a patch here for that library because it uses the same types as `redux-persist`.

Unfortunately, the last release of `redux-persist` used a package `flat-stream` which was malicious and has been removed from npm. The latest commits to `redux-persist` (about 1 year ago) do not build; we cannot use the master branch. And between the last release and last commit, the changes have all been breaking.

Patching this last release (about 3 years old at this point) directly is far simpler than attempting to fix the upstream library's master branch or figuring out an alternative to the malicious and now non-existent dependency.

* Adds debouncing

* Fixes AttributeError: 'dict' object has no attribute 'invert_mask'

* Updates package.json to use redux-persist patches

* Attempts to fix redux-persist debounce patch

* Fixes undo/redo

* Fixes invert mask

* Debounce > 300ms

* Limits history to 256 for each of undo and redo

* Canvas styling

* Hotkeys improvement

* Add Metadata To Viewer

* Increases CFG Scale max to 200

* Fix gallery width size for Outpainting

Also fixes the canvas resizing failing n fast pushes

* Fixes disappearing canvas grid lines

* Adds staging area

* Fixes "use all" not setting variationAmount

Now sets to 0 when the image had variations.

* Builds fresh bundle

* Outpainting tab loads to empty canvas instead of upload

* Fixes wonky canvas layer ordering & compositing

* Fixes error on inpainting paste back

`TypeError: 'float' object cannot be interpreted as an integer`

* Hides staging area outline on mouseover prev/next

* Fixes inpainting not doing img2img when no mask

* Fixes bbox not resizing in outpainting if partially off screen

* Fixes crashes during iterative outpaint. Still doesn't work correctly though.

* Fix iterative outpainting by restoring original images

* Moves image uploading to HTTP

- It all seems to work fine
- A lot of cleanup is still needed
- Logging needs to be added
- May need types to be reviewed

* Fixes: outpainting temp images show in gallery

* WIP refactor to unified canvas

* Removes console.log from redux-persist patch

* Initial unification of canvas

* Removes all references to split inpainting/outpainting canvas

* Add patchmatch and infill_method parameter to prompt2image (options are 'patchmatch' or 'tile').

* Fixes app after removing in/out-painting refs

* Rebases on dev, updates new env files w/ patchmatch

* Organises features/canvas

* Fixes bounding box ending up offscreen

* Organises features/canvas

* Stops unnecessary canvas rescales on gallery state change

* Fixes 2px layout shift on toggle canvas lock

* Clips lines drawn while canvas locked

When drawing with the locked canvas, if a brush stroke gets too close to the edge of the canvas and its stroke would extend past the edge of the canvas, the edge of that stroke will be seen after unlocking the canvas.

This could cause a problem if you unlock the canvas and now have a bunch of strokes just outside the init image area, which are far back in undo history and you cannot easily erase.

With this change, lines drawn while the canvas is locked get clipped to the initial image bbox, fixing this issue.

Additionally, the merge and save to gallery functions have been updated to respect the initial image bbox so they function how you'd expect.

* Fixes reset canvas view when locked

* Fixes send to buttons

* Fixes bounding box not being rounded to 64

* Abandons "inpainting" canvas lock

* Fixes save to gallery including empty area, adds download and copy image

* Fix Current Image display background going over image bounds

* Sets status immediately when clicking Invoke

* Adds hotkeys and refactors sharing of konva instances

Adds hotkeys to canvas. As part of this change, the access to konva instance objects was refactored:

Previously closure'd refs were used to indirectly get access to the konva instances outside of react components.

Now, a  getter and setter function are used to provide access directly to the konva objects.

* Updates hotkeys

* Fixes canvas showing spinner on first load

Also adds good default canvas scale and positioning when no image is on it

* Fixes possible hang on MaskCompositer

* Improves behaviour when setting init canvas image/reset view

* Resets bounding box coords/dims when no image present

* Disables canvas actions which cannot be done during processing

* Adds useToastWatcher hook

- Dispatch an `addToast` action with standard Chakra toast options object to add a toast to the toastQueue
- The hook is called in App.tsx and just useEffect's w/ toastQueue as dependency to create the toasts
- So now you can add toasts anywhere you have access to `dispatch`, which includes middleware and thunks
- Adds first usage of this for the save image buttons in canvas

* Update Hotkey Info

Add missing tooltip hotkeys and update the hotkeys modal to reflect the new hotkeys for the Unified Canvas.

* Fix theme changer not displaying current theme on page refresh

* Fix tab count in hotkeys panel

* Unify Brush and Eraser Sizes

* Fix staging area display toggle not working

* Staging Area delete button is now red

So it doesnt feel blended into to the rest of them.

* Revert "Fix theme changer not displaying current theme on page refresh"

This reverts commit 903edfb803e743500242589ff093a8a8a0912726.

* Add arguments to use SSL to webserver

* Integrates #1487 - touch events

Need to add:
- Pinch zoom
- Touch-specific handling (some things aren't quite right)

* Refactors upload-related async thunks

- Now standard thunks instead of RTK createAsyncThunk()
- Adds toasts for all canvas upload-related actions

* Reorganises app file structure

* Fixes Canvas Auto Save to Gallery

* Fixes staging area outline

* Adds staging area hotkeys, disables gallery left/right when staging

* Fixes Use All Parameters

* Fix metadata viewer image url length when viewing intermediate

* Fixes intermediate images being tiny in txt2img/img2img

* Removes stale code

* Improves canvas status text and adds option to toggle debug info

* Fixes paste image to upload

* Adds model drop-down to site header

* Adds theme changer popover

* Fix missing key on ThemeChanger map

* Fixes stage position changing on zoom

* Hotkey Cleanup

- Viewer is now Z
- Canvas Move tool is V - sync with PS
- Removed some unused hotkeys

* Fix canvas resizing when both options and gallery are unpinned

* Implements thumbnails for gallery

- Thumbnails are saved whenever an image is saved, and when gallery requests images from server
- Thumbnails saved at original image aspect ratio with width of 128px as WEBP
- If the thumbnail property of an image is unavailable for whatever reason, the image's full size URL is used instead

* Saves thumbnails to separate thumbnails directory

* Thumbnail size = 256px

* Fix Lightbox Issues

* Disables canvas image saving functions when processing

* Fix index error on going past last image in Gallery

* WIP - Lightbox Fixes

Still need to fix the images not being centered on load when the image res changes

* Fixes another similar index error, simplifies logic

* Reworks canvas toolbar

* Fixes canvas toolbar upload button

* Cleans up IAICanvasStatusText

* Improves metadata handling, fixes #1450

- Removes model list from metadata
- Adds generation's specific model to metadata
- Displays full metadata in JSON viewer

* Gracefully handles corrupted images; fixes #1486

- App does not crash if corrupted image loaded
- Error is displayed in the UI console and CLI output if an image cannot be loaded

* Adds hotkey to reset canvas interaction state

If the canvas' interaction state (e.g. isMovingBoundingBox, isDrawing, etc) get stuck somehow, user can press Escape to reset the state.

* Removes stray console.log()

* Fixes bug causing gallery to close on context menu open

* Minor bugfixes

- When doing long-running canvas image exporting actions, display indeterminate progress bar
- Fix staging area image outline not displaying after committing/discarding results

* Removes unused imports

* Fixes repo root .gitignore ignoring frontend things

* Builds fresh bundle

* Styling updates

* Removes reasonsWhyNotReady

The popover doesn't play well with the button being disabled, and I don't think adds any value.

* Image gallery resize/style tweaks

* Styles buttons for clearing canvas history and mask

* First pass on Canvas options panel

* Fixes bug where discarding staged images results in loss of history

* Adds Save to Gallery button to staging toolbar

* Rearrange some canvas toolbar icons

Put brush stuff together and canvas movement stuff together

* Fix gallery maxwidth on unified canvas

* Update Layer hotkey display to UI

* Adds option to crop to bounding box on save

* Masking option tweaks

* Crop to Bounding Box > Save Box Region Only

* Adds clear temp folder

* Updates mask options popover behavior

* Builds fresh bundle

* Fix styling on alert modals

* Fix input checkbox styling being incorrect on light theme

* Styling fixes

* Improves gallery resize behaviour

* Cap gallery size on canvas tab so it doesnt overflow

* Fixes bug when postprocessing image with no metadata

* Adds IAIAlertDialog component

* Moves Loopback to app settings

* Fixes metadata viewer not showing metadata after refresh

Also adds Dream-style prompt to metadata

* Adds outpainting specific options

* Linting

* Fixes gallery width on lightbox, fixes gallery button expansion

* Builds fresh bundle

* Fix Lightbox images of different res not centering

* Update feature tooltip text

* Highlight mask icon when on mask layer

* Fix gallery not resizing correctly on open and close

* Add loopback to just img2img. Remove from settings.

* Fix to gallery resizing

* Removes Advanced checkbox, cleans up options panel for unified canvas

* Minor styling fixes to new options panel layout

* Styling Updates

* Adds infill method

* Tab Styling Fixes

* memoize outpainting options

* Fix unnecessary gallery re-renders

* Isolate Cursor Pos debug text on canvas to prevent rerenders

* Fixes missing postprocessed image metadata before refresh

* Builds fresh bundle

* Fix rerenders on model select

* Floating panel re-render fix

* Simplify fullscreen hotkey selector

* Add Training WIP Tab

* Adds Training icon

* Move full screen hotkey to floating to prevent tab rerenders

* Adds single-column gallery layout

* Fixes crash on cancel with intermediates enabled, fixes #1416

* Updates npm dependencies

* Fixes img2img attempting inpaint when init image has transparency

* Fixes missing threshold and perlin parameters in metadata viewer

* Renames "Threshold" > "Noise Threshold"

* Fixes postprocessing not being disabled when clicking use all

* Builds fresh bundle

* Adds color picker

* Lints & builds fresh bundle

* Fixes iterations being disabled when seed random & variations are off

* Un-floors cursor position

* Changes color picker preview to circles

* Fixes variation params not set correctly when recalled

* Fixes invoke hotkey not working in input fields

* Simplifies Accordion

Prep for adding reset buttons for each section

* Fixes mask brush preview color

* Committing color picker color changes tool to brush

* Color picker does not overwrite user-selected alpha

* Adds brush color alpha hotkey

* Lints

* Removes force_outpaint param

* Add inpaint size options to inpaint at a larger size than the actual inpaint image, then scale back down for recombination

* Bug fix for inpaint size

* Adds inpaint size (as scale bounding box) to UI

* Adds auto-scaling for inpaint size

* Improves scaled bbox display logic

* Fixes bug with clear mask and history

* Fixes shouldShowStagingImage not resetting to true on commit

* Builds fresh bundle

* Fixes canvas failing to scale on first run

* Builds fresh bundle

* Fixes unnecessary canvas scaling

* Adds gallery drag and drop to img2img/canvas

* Builds fresh bundle

* Fix desktop mode being broken with new versions of flaskwebgui

* Fixes canvas dimensions not setting on first load

* Builds fresh bundle

* stop crash on !import_models call on model inside rootdir

- addresses bug report #1546

* prevent "!switch state gets confused if model switching fails"

- If !switch were to fail on a particular model, then generate got
  confused and wouldn't try again until you switch to a different working
  model and back again.

- This commit fixes and closes #1547

* Revert "make the docstring more readable and improve the list_models logic"

This reverts commit 248068fe5d.

* fix model cache path

* also set fail-fast to it's default (true)
in this way the whole action fails if one job fails
this should unblock the runners!!!

* fix output path for Archive results

* disable checks for python 3.9

* Update-requirements and test-invoke-pip workflow (#1574)

* update requirements files

* update test-invoke-pip workflow

* move requirements-mkdocs.txt to docs folder (#1575)

* move requirements-mkdocs.txt to docs folder

* update copyright

* Fixes outpainting with resized inpaint size

* Interactive configuration (#1517)

* Update scripts/configure_invokeai.py

prevent crash if output exists

Co-authored-by: psychedelicious <4822129+psychedelicious@users.noreply.github.com>

* implement changes requested by reviews

* default to correct root and output directory on Windows systems

- Previously the script was relying on the readline buffer editing
  feature to set up the correct default. But this feature doesn't
  exist on windows.

- This commit detects when user typed return with an empty directory
  value and replaces with the default directory.

* improved readability of directory choices

* Update scripts/configure_invokeai.py

Co-authored-by: psychedelicious <4822129+psychedelicious@users.noreply.github.com>

* better error reporting at startup

- If user tries to run the script outside of the repo or runtime directory,
  a more informative message will appear explaining the problem.

Co-authored-by: psychedelicious <4822129+psychedelicious@users.noreply.github.com>

* Embedding merging (#1526)

* add whole <style token> to vocab for concept library embeddings

* add ability to load multiple concept .bin files

* make --log_tokenization respect custom tokens

* start working on concept downloading system

* preliminary support for dynamic loading and merging of multiple embedded models

- The embedding_manager is now enhanced with ldm.invoke.concepts_lib,
  which handles dynamic downloading and caching of embedded models from
  the Hugging Face concepts library (https://huggingface.co/sd-concepts-library)

- Downloading of a embedded model is triggered by the presence of one or more
  <concept> tags in the prompt.

- Once the embedded model is downloaded, its trigger phrase will be loaded
  into the embedding manager and the prompt's <concept> tag will be replaced
  with the <trigger_phrase>

- The downloaded model stays on disk for fast loading later.

- The CLI autocomplete will complete partial <concept> tags for you. Type a
  '<' and hit tab to get all ~700 concepts.

BUGS AND LIMITATIONS:

- MODEL NAME VS TRIGGER PHRASE

  You must use the name of the concept embed model from the SD
  library, and not the trigger phrase itself. Usually these are the
  same, but not always. For example, the model named "hoi4-leaders"
  corresponds to the trigger "<HOI4-Leader>"

  One reason for this design choice is that there is no apparent
  constraint on the uniqueness of the trigger phrases and one trigger
  phrase may map onto multiple models. So we use the model name
  instead.

  The second reason is that there is no way I know of to search
  Hugging Face for models with certain trigger phrases. So we'd have
  to download all 700 models to index the phrases.

  The problem this presents is that this may confuse users, who will
  want to reuse prompts from distributions that use the trigger phrase
  directly. Usually this will work, but not always.

- WON'T WORK ON A FIREWALLED SYSTEM

  If the host running IAI has no internet connection, it can't
  download the concept libraries. I will add a script that allows
  users to preload a list of concept models.

- BUG IN PROMPT REPLACEMENT WHEN MODEL NOT FOUND

  There's a small bug that occurs when the user provides an invalid
  model name. The <concept> gets replaced with <None> in the prompt.

* fix loading .pt embeddings; allow multi-vector embeddings; warn on dupes

* simplify replacement logic and remove cuda assumption

* download list of concepts from hugging face

* remove misleading customization of '*' placeholder

the existing code as-is did not do anything; unclear what it was supposed to do.

the obvious alternative -- setting using 'placeholder_strings' instead of
'placeholder_tokens' to match model.params.personalization_config.params.placeholder_strings --
caused a crash. i think this is because the passed string also needed to be handed over
on init of the PersonalizedBase as the 'placeholder_token' argument.
this is weird config dict magic and i don't want to touch it. put a
breakpoint in personalzied.py line 116 (top of PersonalizedBase.__init__) if
you want to have a crack at it yourself.

* address all the issues raised by damian0815 in review of PR #1526

* actually resize the token_embeddings

* multiple improvements to the concept loader based on code reviews

1. Activated the --embedding_directory option (alias --embedding_path)
   to load a single embedding or an entire directory of embeddings at
   startup time.

2. Can turn off automatic loading of embeddings using --no-embeddings.

3. Embedding checkpoints are scanned with the pickle scanner.

4. More informative error messages when a concept can't be loaded due
   either to a 404 not found error or a network error.

* autocomplete terms end with ">" now

* fix startup error and network unreachable

1. If the .invokeai file does not contain the --root and --outdir options,
  invoke.py will now fix it.

2. Catch and handle network problems when downloading hugging face textual
   inversion concepts.

* fix misformatted error string

Co-authored-by: Damian Stewart <d@damianstewart.com>

* model_cache.py: fix list_models

Signed-off-by: devops117 <55235206+devops117@users.noreply.github.com>

* add statement of values (#1584)

* this adds the Statement of Values

Google doc source = https://docs.google.com/document/d/1-PrUKDJcxy8OyNGc8CyiHhv2VgLvjt7LRGlEpbg1nmQ/edit?usp=sharing

* Fix heading

* Update InvokeAI_Statement_of_Values.md

* Update InvokeAI_Statement_of_Values.md

* Update InvokeAI_Statement_of_Values.md

* Update InvokeAI_Statement_of_Values.md

* Update InvokeAI_Statement_of_Values.md

* add keturn and mauwii to the team member list

* Fix punctuation

* this adds the Statement of Values

Google doc source = https://docs.google.com/document/d/1-PrUKDJcxy8OyNGc8CyiHhv2VgLvjt7LRGlEpbg1nmQ/edit?usp=sharing

* add keturn and mauwii to the team member list

* fix formating
- make sub bullets use * (decide to all use - or *)
- indent sub bullets
Sorry, first only looked at the code version and found this only after
looking at the markdown rendered version

* use multiparagraph numbered sections

* Break up Statement Of Values as per comments on #1584

* remove duplicated word, reduce vagueness

it's important not to overstate how many artists we are consulting.

* fix typo (sorry blessedcoolant)

Co-authored-by: mauwii <Mauwii@outlook.de>
Co-authored-by: damian <git@damianstewart.com>

* update dockerfile (#1551)

* update dockerfile

* remove not existing file from .dockerignore

* remove bloat and unecesary step
also use --no-cache-dir for pip install
image is now close to 2GB

* make Dockerfile a variable

* set base image to `ubuntu:22.10`

* add build-essential

* link outputs folder for persistence

* update tag variable

* update docs

* fix not customizeable build args, add reqs output

* !model_import autocompletes in ROOTDIR

* Adds psychedelicious to statement of values signature (#1602)

* add a --no-patchmatch option to disable patchmatch loading (#1598)

This feature was added to prevent the CI Macintosh tests from erroring
out when patchmatch is unable to retrieve its shared library from
github assets.

* Fix #1599 by relaxing the `match_trigger` regex (#1601)

* Fix #1599 by relaxing the `match_trigger` regex

Also simplify logic and reduce duplication.

* restrict trigger regex again (but not so far)

* make concepts library work with Web UI

This PR makes it possible to include a Hugging Face concepts library
<style-or-subject-trigger> in the WebUI prompt. The metadata seems
to be correctly handled.

* documentation enhancements (#1603)

- Add documentation for the Hugging Face concepts library and TI embedding.

- Fixup index.md to point to each of the feature documentation files,
  including ones that are pending.

* tweak setup and environment files for linux & pypatchmatch (#1580)

* tweak setup and environment files for linux & pypatchmatch

- Downgrade python requirements to 3.9 because 3.10 is not supported
  on Ubuntu 20.04 LTS (widely-used distro)
- Use our github pypatchmatch 0.1.3 in order to install Makefile
  where it needs to be.
- Restored "-e ." as the last install step on pip installs. Hopefully
  this will not trigger the high-CPU hang we've previously experienced.

* keep windows on basicsr 1.4.1

* keep windows on basicsr 1.4.1

* bump pypatchmatch requirement to 0.1.4

- This brings in a version of pypatchmatch that will gracefully
  handle internet connection not available at startup time.
- Also refactors and simplifies the handling of gfpgan's basicsr requirement
  across various platforms.

* revert to older version of list_models() (#1611)

This restores the correct behavior of list_models() and quenches
the bug of list_models() returning a single model entry named "name".

I have not investigated what was wrong with the new version, but I
think it may have to do with changes to the behavior in dict.update()

* Fixes for #1604 (#1605)

* Converts ESRGAN image input to RGB

- Also adds typing for image input.
- Partially resolves #1604

* ensure there are unmasked pixels before color matching

Co-authored-by: Kyle Schouviller <kyle0654@hotmail.com>

* update index.md (#1609)

- comment out non existing link
- fix indention
- add seperator between feature categories

* Debloat-docker (#1612)

* debloat Dockerfile
- less options more but more userfriendly
- better Entrypoint to simulate CLI usage
- without command the container still starts the web-host

* debloat build.sh

* better syntax in run.sh

* update Docker docs
- fix description of VOLUMENAME
- update run script example to reflect new entrypoint

* Test installer (#1618)

* test linux install

* try removing http from parsed requirements

* pip install confirmed working on linux

* ready for linux testing

- rebuilt py3.10-linux-x86_64-cuda-reqs.txt to include pypatchmatch
  dependency.
- point install.sh and install.bat to test-installer branch.

* Updates MPS reqs

* detect broken readline history files

* fix download.pytorch.org URL

* Test installer (Win 11) (#1620)

Co-authored-by: Cyrus Chan <cyruswkc@hku.hk>

* Test installer (MacOS 13.0.1 w/ torch==1.12.0) (#1621)

* Test installer (Win 11)

* Test installer (MacOS 13.0.1 w/ torch==1.12.0)

Co-authored-by: Cyrus Chan <cyruswkc@hku.hk>

* change sourceball to development for testing

* Test installer (MacOS 13.0.1 w/ torch==1.12.1 & torchvision==1.13.1) (#1622)

* Test installer (Win 11)

* Test installer (MacOS 13.0.1 w/ torch==1.12.0)

* Test installer (MacOS 13.0.1 w/ torch==1.12.1 & torchvision==1.13.1)

Co-authored-by: Cyrus Chan <cyruswkc@hku.hk>

Co-authored-by: psychedelicious <4822129+psychedelicious@users.noreply.github.com>
Co-authored-by: Cyrus Chan <82143712+cyruschan360@users.noreply.github.com>
Co-authored-by: Cyrus Chan <cyruswkc@hku.hk>

* 2.2 Doc Updates (#1589)

* Unified Canvas Docs & Assets

Unified Canvas draft

Advanced Tools Updates

Doc Updates (lstein feedback)

* copy edits to Unified Canvas docs

- consistent capitalisation and feature naming
- more intimate address (replace "the user" with "you") for improved User
  Engagement(tm)
- grammatical massaging and *poesie*

Co-authored-by: Lincoln Stein <lincoln.stein@gmail.com>
Co-authored-by: damian <git@damianstewart.com>

* include a step after config to `cat ~/.invokeai` (#1629)

* disable patchmatch in CI actions (#1626)

* disable patchmatch in CI actions

* fix indention

* replace tab with spaces

Co-authored-by: Matthias Wild <40327258+mauwii@users.noreply.github.com>
Co-authored-by: mauwii <Mauwii@outlook.de>

* Fix installer script for macOS. (#1630)

* refer to the platform as 'osx' instead of 'mac', otherwise the
composed URL to micromamba is wrong.
* move the `-O` option to `tar` to be grouped with the other tar flags
to avoid the `-O` being interpreted as something to unarchive.

* Removes symlinked environment.yaml (#1631)

Was unintentionally added in #1621

* Fix inpainting with iterations (#1635)

* fix error when inpainting using runwayml inpainting model (#1634)

- error was "Omnibus object has no attribute pil_image"
- closes #1596

* add k_dpmpp_2_a and k_dpmpp_2 solvers options (#1389)

* add k_dpmpp_2_a and k_dpmpp_2 solvers options

* update frontend

Co-authored-by: Victor <victorca25@users.noreply.github.com>
Co-authored-by: Lincoln Stein <lincoln.stein@gmail.com>

* add .editorconfig (#1636)

* Web UI 2.2 bugfixes (#1572)

* Fixes bug preventing multiple images from being generated

* Fixes valid seam strength value range

* Update Delete Alert Text

Indicates to the user that images are not permanently deleted.

* Fixes left/right arrows not working on gallery

* Fixes initial image on load erroneously set to a user uploaded image

Should be a result gallery image.

* Lightbox Fixes

- Lightbox is now a button in the current image buttons
- Lightbox is also now available in the gallery context menu
- Lightbox zoom issues fixed
- Lightbox has a fade in animation.

* Fix image display wrapper in current preview not overflow bounds

* Revert "Fix image display wrapper in current preview not overflow bounds"

This reverts commit 5511c82714dbf1d1999d64e8bc357bafa34ddf37.

* Change Staging Area discard icon from Bin to X

* Expose Snap Threshold and Move Snap Settings to BBox Panel

* Changes img2img strength default to 0.75

* Fixes drawing triggering when mouse enters canvas w/ button down

When we only supported inpainting and no zoom, this was useful. It allowed the cursor to leave the canvas (which was easy to do given the limited canvas dimensions) and without losing the "I am drawing" state. 

With a zoomable canvas this is no longer as useful.

Additionally, we have more popovers and tools (like the color pickers) which result in unexpected brush strokes. This fixes that issue.

* Revert "Expose Snap Threshold and Move Snap Settings to BBox Panel"

We will handle this a bit differently - by allowing the grid origin to be moved. I will dig in at some point.

This reverts commit 33c92ecf4da724c2f17d9d91c7ea31a43a2f6deb.

* Adds Limit Strokes to Box

* Adds fill bounding box button

* Adds erase bounding box button

* Changes Staging area discard icon to match others

* Fixes right click breaking move tool

* Fixes brush preview visibility issue with "darken outside box"

* Fixes history bugs with addFillRect, addEraseRect, and other actions

* Adds missing `key`

* Fixes postprocessing being applied to canvas generations

* Fixes bbox not getting scaled in various situations

* Fixes staging area show image toggle not resetting on accept/discard

* Locks down canvas while generating/staging

* Fixes move tool breaking when canvas loses focus during move/transform

* Hides cursor when restrict strokes is on and mouse outside bbox

* Lints

* Builds fresh bundle

* Fix overlapping hotkey for Fill Bounding Box

* Build Fresh Bundle

* Fixes bug with mask and bbox overlay

* Builds fresh bundle

Co-authored-by: blessedcoolant <54517381+blessedcoolant@users.noreply.github.com>
Co-authored-by: Lincoln Stein <lincoln.stein@gmail.com>

* disable NSFW checker loading during the CI tests (#1641)

* disable NSFW checker loading during the CI tests

The NSFW filter apparently causes invoke.py to crash during CI testing,
possibly due to out of memory errors. This workaround disables NSFW
model loading.

* doc change

* fix formatting errors in yml files

* Configure the NSFW checker at install time with default on (#1624)

* configure the NSFW checker at install time with default on

1. Changes the --safety_checker argument to --nsfw_checker and
--no-nsfw_checker. The original argument is recognized for backward
compatibility.

2. The configure script asks users whether to enable the checker
(default yes). Also offers users ability to select default sampler and
number of generation steps.

3.Enables the pasting of the caution icon on blurred images when
InvokeAI is installed into the package directory.

4. Adds documentation for the NSFW checker, including caveats about
accuracy, memory requirements, and intermediate image dispaly.

* use better fitting icon

* NSFW defaults false for testing

* set default back to nsfw active

Co-authored-by: Matthias Wild <40327258+mauwii@users.noreply.github.com>
Co-authored-by: mauwii <Mauwii@outlook.de>

Signed-off-by: devops117 <55235206+devops117@users.noreply.github.com>
Co-authored-by: psychedelicious <4822129+psychedelicious@users.noreply.github.com>
Co-authored-by: blessedcoolant <54517381+blessedcoolant@users.noreply.github.com>
Co-authored-by: Kyle Schouviller <kyle0654@hotmail.com>
Co-authored-by: javl <mail@jaspervanloenen.com>
Co-authored-by: Kent Keirsey <31807370+hipsterusername@users.noreply.github.com>
Co-authored-by: mauwii <Mauwii@outlook.de>
Co-authored-by: Matthias Wild <40327258+mauwii@users.noreply.github.com>
Co-authored-by: Damian Stewart <d@damianstewart.com>
Co-authored-by: DevOps117 <55235206+devops117@users.noreply.github.com>
Co-authored-by: damian <git@damianstewart.com>
Co-authored-by: Damian Stewart <null@damianstewart.com>
Co-authored-by: Cyrus Chan <82143712+cyruschan360@users.noreply.github.com>
Co-authored-by: Cyrus Chan <cyruswkc@hku.hk>
Co-authored-by: Andre LaBranche <dre@mac.com>
Co-authored-by: victorca25 <41912303+victorca25@users.noreply.github.com>
Co-authored-by: Victor <victorca25@users.noreply.github.com>
2022-11-30 16:12:23 -05:00

1152 lines
48 KiB
Python

# Copyright (c) 2022 Lincoln D. Stein (https://github.com/lstein)
import pyparsing
# Derived from source code carrying the following copyrights
# Copyright (c) 2022 Machine Vision and Learning Group, LMU Munich
# Copyright (c) 2022 Robin Rombach and Patrick Esser and contributors
import torch
import numpy as np
import random
import os
import time
import re
import sys
import traceback
import transformers
import io
import gc
import hashlib
import cv2
import skimage
from omegaconf import OmegaConf
from ldm.invoke.generator.base import downsampling
from PIL import Image, ImageOps
from torch import nn
from pytorch_lightning import seed_everything, logging
from ldm.invoke.prompt_parser import PromptParser
from ldm.util import instantiate_from_config
from ldm.invoke.globals import Globals
from ldm.models.diffusion.ddim import DDIMSampler
from ldm.models.diffusion.plms import PLMSSampler
from ldm.models.diffusion.ksampler import KSampler
from ldm.invoke.pngwriter import PngWriter
from ldm.invoke.args import metadata_from_png
from ldm.invoke.image_util import InitImageResizer
from ldm.invoke.devices import choose_torch_device, choose_precision
from ldm.invoke.conditioning import get_uc_and_c_and_ec
from ldm.invoke.model_cache import ModelCache
from ldm.invoke.seamless import configure_model_padding
from ldm.invoke.txt2mask import Txt2Mask, SegmentedGrayscale
from ldm.invoke.concepts_lib import Concepts
def fix_func(orig):
if hasattr(torch.backends, 'mps') and torch.backends.mps.is_available():
def new_func(*args, **kw):
device = kw.get("device", "mps")
kw["device"]="cpu"
return orig(*args, **kw).to(device)
return new_func
return orig
torch.rand = fix_func(torch.rand)
torch.rand_like = fix_func(torch.rand_like)
torch.randn = fix_func(torch.randn)
torch.randn_like = fix_func(torch.randn_like)
torch.randint = fix_func(torch.randint)
torch.randint_like = fix_func(torch.randint_like)
torch.bernoulli = fix_func(torch.bernoulli)
torch.multinomial = fix_func(torch.multinomial)
# this is fallback model in case no default is defined
FALLBACK_MODEL_NAME='stable-diffusion-1.5'
"""Simplified text to image API for stable diffusion/latent diffusion
Example Usage:
from ldm.generate import Generate
# Create an object with default values
gr = Generate('stable-diffusion-1.4')
# do the slow model initialization
gr.load_model()
# Do the fast inference & image generation. Any options passed here
# override the default values assigned during class initialization
# Will call load_model() if the model was not previously loaded and so
# may be slow at first.
# The method returns a list of images. Each row of the list is a sub-list of [filename,seed]
results = gr.prompt2png(prompt = "an astronaut riding a horse",
outdir = "./outputs/samples",
iterations = 3)
for row in results:
print(f'filename={row[0]}')
print(f'seed ={row[1]}')
# Same thing, but using an initial image.
results = gr.prompt2png(prompt = "an astronaut riding a horse",
outdir = "./outputs/,
iterations = 3,
init_img = "./sketches/horse+rider.png")
for row in results:
print(f'filename={row[0]}')
print(f'seed ={row[1]}')
# Same thing, but we return a series of Image objects, which lets you manipulate them,
# combine them, and save them under arbitrary names
results = gr.prompt2image(prompt = "an astronaut riding a horse"
outdir = "./outputs/")
for row in results:
im = row[0]
seed = row[1]
im.save(f'./outputs/samples/an_astronaut_riding_a_horse-{seed}.png')
im.thumbnail(100,100).save('./outputs/samples/astronaut_thumb.jpg')
Note that the old txt2img() and img2img() calls are deprecated but will
still work.
The full list of arguments to Generate() are:
gr = Generate(
# these values are set once and shouldn't be changed
conf:str = path to configuration file ('configs/models.yaml')
model:str = symbolic name of the model in the configuration file
precision:float = float precision to be used
safety_checker:bool = activate safety checker [False]
# this value is sticky and maintained between generation calls
sampler_name:str = ['ddim', 'k_dpm_2_a', 'k_dpm_2', 'k_dpmpp_2', 'k_dpmpp_2_a', 'k_euler_a', 'k_euler', 'k_heun', 'k_lms', 'plms'] // k_lms
# these are deprecated - use conf and model instead
weights = path to model weights ('models/ldm/stable-diffusion-v1/model.ckpt')
config = path to model configuration ('configs/stable-diffusion/v1-inference.yaml')
)
"""
class Generate:
"""Generate class
Stores default values for multiple configuration items
"""
def __init__(
self,
model = None,
conf = 'configs/models.yaml',
embedding_path = None,
sampler_name = 'k_lms',
ddim_eta = 0.0, # deterministic
full_precision = False,
precision = 'auto',
outdir = 'outputs/img-samples',
gfpgan=None,
codeformer=None,
esrgan=None,
free_gpu_mem=False,
safety_checker:bool=False,
max_loaded_models:int=2,
# these are deprecated; if present they override values in the conf file
weights = None,
config = None,
):
mconfig = OmegaConf.load(conf)
self.height = None
self.width = None
self.model_cache = None
self.iterations = 1
self.steps = 50
self.cfg_scale = 7.5
self.sampler_name = sampler_name
self.ddim_eta = 0.0 # same seed always produces same image
self.precision = precision
self.strength = 0.75
self.seamless = False
self.seamless_axes = {'x','y'}
self.hires_fix = False
self.embedding_path = embedding_path
self.model = None # empty for now
self.model_hash = None
self.sampler = None
self.device = None
self.session_peakmem = None
self.generators = {}
self.base_generator = None
self.seed = None
self.outdir = outdir
self.gfpgan = gfpgan
self.codeformer = codeformer
self.esrgan = esrgan
self.free_gpu_mem = free_gpu_mem
self.max_loaded_models = max_loaded_models,
self.size_matters = True # used to warn once about large image sizes and VRAM
self.txt2mask = None
self.safety_checker = None
self.karras_max = None
# Note that in previous versions, there was an option to pass the
# device to Generate(). However the device was then ignored, so
# it wasn't actually doing anything. This logic could be reinstated.
device_type = choose_torch_device()
print(f'>> Using device_type {device_type}')
self.device = torch.device(device_type)
if full_precision:
if self.precision != 'auto':
raise ValueError('Remove --full_precision / -F if using --precision')
print('Please remove deprecated --full_precision / -F')
print('If auto config does not work you can use --precision=float32')
self.precision = 'float32'
if self.precision == 'auto':
self.precision = choose_precision(self.device)
# model caching system for fast switching
self.model_cache = ModelCache(mconfig,self.device,self.precision,max_loaded_models=max_loaded_models)
self.model_name = model or self.model_cache.default_model() or FALLBACK_MODEL_NAME
# for VRAM usage statistics
self.session_peakmem = torch.cuda.max_memory_allocated() if self._has_cuda else None
transformers.logging.set_verbosity_error()
# gets rid of annoying messages about random seed
logging.getLogger('pytorch_lightning').setLevel(logging.ERROR)
# load safety checker if requested
if safety_checker:
try:
print('>> Initializing safety checker')
from diffusers.pipelines.stable_diffusion.safety_checker import StableDiffusionSafetyChecker
from transformers import AutoFeatureExtractor
safety_model_id = "CompVis/stable-diffusion-safety-checker"
safety_model_path = os.path.join(Globals.root,'models',safety_model_id)
self.safety_checker = StableDiffusionSafetyChecker.from_pretrained(safety_model_id,
local_files_only=True,
cache_dir=safety_model_path,
)
self.safety_feature_extractor = AutoFeatureExtractor.from_pretrained(safety_model_id,
local_files_only=True,
cache_dir=safety_model_path,
)
self.safety_checker.to(self.device)
except Exception:
print('** An error was encountered while installing the safety checker:')
print(traceback.format_exc())
def prompt2png(self, prompt, outdir, **kwargs):
"""
Takes a prompt and an output directory, writes out the requested number
of PNG files, and returns an array of [[filename,seed],[filename,seed]...]
Optional named arguments are the same as those passed to Generate and prompt2image()
"""
results = self.prompt2image(prompt, **kwargs)
pngwriter = PngWriter(outdir)
prefix = pngwriter.unique_prefix()
outputs = []
for image, seed in results:
name = f'{prefix}.{seed}.png'
path = pngwriter.save_image_and_prompt_to_png(
image, dream_prompt=f'{prompt} -S{seed}', name=name)
outputs.append([path, seed])
return outputs
def txt2img(self, prompt, **kwargs):
outdir = kwargs.pop('outdir', self.outdir)
return self.prompt2png(prompt, outdir, **kwargs)
def img2img(self, prompt, **kwargs):
outdir = kwargs.pop('outdir', self.outdir)
assert (
'init_img' in kwargs
), 'call to img2img() must include the init_img argument'
return self.prompt2png(prompt, outdir, **kwargs)
from ldm.invoke.generator.inpaint import infill_methods
def prompt2image(
self,
# these are common
prompt,
iterations = None,
steps = None,
seed = None,
cfg_scale = None,
ddim_eta = None,
skip_normalize = False,
image_callback = None,
step_callback = None,
width = None,
height = None,
sampler_name = None,
seamless = False,
seamless_axes = {'x','y'},
log_tokenization = False,
with_variations = None,
variation_amount = 0.0,
threshold = 0.0,
perlin = 0.0,
karras_max = None,
outdir = None,
# these are specific to img2img and inpaint
init_img = None,
init_mask = None,
text_mask = None,
invert_mask = False,
fit = False,
strength = None,
init_color = None,
# these are specific to embiggen (which also relies on img2img args)
embiggen = None,
embiggen_tiles = None,
embiggen_strength = None,
# these are specific to GFPGAN/ESRGAN
gfpgan_strength= 0,
facetool = None,
facetool_strength = 0,
codeformer_fidelity = None,
save_original = False,
upscale = None,
# this is specific to inpainting and causes more extreme inpainting
inpaint_replace = 0.0,
# This controls the size at which inpaint occurs (scaled up for inpaint, then back down for the result)
inpaint_width = None,
inpaint_height = None,
# This will help match inpainted areas to the original image more smoothly
mask_blur_radius: int = 8,
# Set this True to handle KeyboardInterrupt internally
catch_interrupts = False,
hires_fix = False,
use_mps_noise = False,
# Seam settings for outpainting
seam_size: int = 0,
seam_blur: int = 0,
seam_strength: float = 0.7,
seam_steps: int = 10,
tile_size: int = 32,
infill_method = infill_methods[0], # The infill method to use
force_outpaint: bool = False,
enable_image_debugging = False,
**args,
): # eat up additional cruft
"""
ldm.generate.prompt2image() is the common entry point for txt2img() and img2img()
It takes the following arguments:
prompt // prompt string (no default)
iterations // iterations (1); image count=iterations
steps // refinement steps per iteration
seed // seed for random number generator
width // width of image, in multiples of 64 (512)
height // height of image, in multiples of 64 (512)
cfg_scale // how strongly the prompt influences the image (7.5) (must be >1)
seamless // whether the generated image should tile
hires_fix // whether the Hires Fix should be applied during generation
init_img // path to an initial image
init_mask // path to a mask for the initial image
text_mask // a text string that will be used to guide clipseg generation of the init_mask
invert_mask // boolean, if true invert the mask
strength // strength for noising/unnoising init_img. 0.0 preserves image exactly, 1.0 replaces it completely
facetool_strength // strength for GFPGAN/CodeFormer. 0.0 preserves image exactly, 1.0 replaces it completely
ddim_eta // image randomness (eta=0.0 means the same seed always produces the same image)
step_callback // a function or method that will be called each step
image_callback // a function or method that will be called each time an image is generated
with_variations // a weighted list [(seed_1, weight_1), (seed_2, weight_2), ...] of variations which should be applied before doing any generation
variation_amount // optional 0-1 value to slerp from -S noise to random noise (allows variations on an image)
threshold // optional value >=0 to add thresholding to latent values for k-diffusion samplers (0 disables)
perlin // optional 0-1 value to add a percentage of perlin noise to the initial noise
embiggen // scale factor relative to the size of the --init_img (-I), followed by ESRGAN upscaling strength (0-1.0), followed by minimum amount of overlap between tiles as a decimal ratio (0 - 1.0) or number of pixels
embiggen_tiles // list of tiles by number in order to process and replace onto the image e.g. `0 2 4`
embiggen_strength // strength for embiggen. 0.0 preserves image exactly, 1.0 replaces it completely
To use the step callback, define a function that receives two arguments:
- Image GPU data
- The step number
To use the image callback, define a function of method that receives two arguments, an Image object
and the seed. You can then do whatever you like with the image, including converting it to
different formats and manipulating it. For example:
def process_image(image,seed):
image.save(f{'images/seed.png'})
The code used to save images to a directory can be found in ldm/invoke/pngwriter.py.
It contains code to create the requested output directory, select a unique informative
name for each image, and write the prompt into the PNG metadata.
"""
# TODO: convert this into a getattr() loop
steps = steps or self.steps
width = width or self.width
height = height or self.height
seamless = seamless or self.seamless
seamless_axes = seamless_axes or self.seamless_axes
hires_fix = hires_fix or self.hires_fix
cfg_scale = cfg_scale or self.cfg_scale
ddim_eta = ddim_eta or self.ddim_eta
iterations = iterations or self.iterations
strength = strength or self.strength
outdir = outdir or self.outdir
self.seed = seed
self.log_tokenization = log_tokenization
self.step_callback = step_callback
self.karras_max = karras_max
with_variations = [] if with_variations is None else with_variations
# will instantiate the model or return it from cache
model = self.set_model(self.model_name)
# self.width and self.height are set by set_model()
# to the width and height of the image training set
width = width or self.width
height = height or self.height
configure_model_padding(model, seamless, seamless_axes)
assert cfg_scale > 1.0, 'CFG_Scale (-C) must be >1.0'
assert threshold >= 0.0, '--threshold must be >=0.0'
assert (
0.0 < strength < 1.0
), 'img2img and inpaint strength can only work with 0.0 < strength < 1.0'
assert (
0.0 <= variation_amount <= 1.0
), '-v --variation_amount must be in [0.0, 1.0]'
assert (
0.0 <= perlin <= 1.0
), '--perlin must be in [0.0, 1.0]'
assert (
(embiggen == None and embiggen_tiles == None) or (
(embiggen != None or embiggen_tiles != None) and init_img != None)
), 'Embiggen requires an init/input image to be specified'
if len(with_variations) > 0 or variation_amount > 1.0:
assert seed is not None,\
'seed must be specified when using with_variations'
if variation_amount == 0.0:
assert iterations == 1,\
'when using --with_variations, multiple iterations are only possible when using --variation_amount'
assert all(0 <= weight <= 1 for _, weight in with_variations),\
f'variation weights must be in [0.0, 1.0]: got {[weight for _, weight in with_variations]}'
width, height, _ = self._resolution_check(width, height, log=True)
assert inpaint_replace >=0.0 and inpaint_replace <= 1.0,'inpaint_replace must be between 0.0 and 1.0'
if sampler_name and (sampler_name != self.sampler_name):
self.sampler_name = sampler_name
self._set_sampler()
# apply the concepts library to the prompt
prompt = self.concept_lib().replace_concepts_with_triggers(prompt, lambda concepts: self.load_concepts(concepts))
# bit of a hack to change the cached sampler's karras threshold to
# whatever the user asked for
if karras_max is not None and isinstance(self.sampler,KSampler):
self.sampler.adjust_settings(karras_max=karras_max)
tic = time.time()
if self._has_cuda():
torch.cuda.reset_peak_memory_stats()
results = list()
init_image = None
mask_image = None
try:
uc, c, extra_conditioning_info = get_uc_and_c_and_ec(
prompt, model =self.model,
skip_normalize=skip_normalize,
log_tokens =self.log_tokenization
)
init_image, mask_image = self._make_images(
init_img,
init_mask,
width,
height,
fit=fit,
text_mask=text_mask,
invert_mask=invert_mask,
force_outpaint=force_outpaint,
)
# TODO: Hacky selection of operation to perform. Needs to be refactored.
generator = self.select_generator(init_image, mask_image, embiggen, hires_fix, force_outpaint)
generator.set_variation(
self.seed, variation_amount, with_variations
)
generator.use_mps_noise = use_mps_noise
checker = {
'checker':self.safety_checker,
'extractor':self.safety_feature_extractor
} if self.safety_checker else None
results = generator.generate(
prompt,
iterations=iterations,
seed=self.seed,
sampler=self.sampler,
steps=steps,
cfg_scale=cfg_scale,
conditioning=(uc, c, extra_conditioning_info),
ddim_eta=ddim_eta,
image_callback=image_callback, # called after the final image is generated
step_callback=step_callback, # called after each intermediate image is generated
width=width,
height=height,
init_img=init_img, # embiggen needs to manipulate from the unmodified init_img
init_image=init_image, # notice that init_image is different from init_img
mask_image=mask_image,
strength=strength,
threshold=threshold,
perlin=perlin,
embiggen=embiggen,
embiggen_tiles=embiggen_tiles,
embiggen_strength=embiggen_strength,
inpaint_replace=inpaint_replace,
mask_blur_radius=mask_blur_radius,
safety_checker=checker,
seam_size = seam_size,
seam_blur = seam_blur,
seam_strength = seam_strength,
seam_steps = seam_steps,
tile_size = tile_size,
infill_method = infill_method,
force_outpaint = force_outpaint,
inpaint_height = inpaint_height,
inpaint_width = inpaint_width,
enable_image_debugging = enable_image_debugging,
)
if init_color:
self.correct_colors(image_list = results,
reference_image_path = init_color,
image_callback = image_callback)
if upscale is not None or facetool_strength > 0:
self.upscale_and_reconstruct(results,
upscale = upscale,
facetool = facetool,
strength = facetool_strength,
codeformer_fidelity = codeformer_fidelity,
save_original = save_original,
image_callback = image_callback)
except KeyboardInterrupt:
if catch_interrupts:
print('**Interrupted** Partial results will be returned.')
else:
raise KeyboardInterrupt
except RuntimeError as e:
print(traceback.format_exc(), file=sys.stderr)
print('>> Could not generate image.')
toc = time.time()
print('>> Usage stats:')
print(
f'>> {len(results)} image(s) generated in', '%4.2fs' % (
toc - tic)
)
if self._has_cuda():
print(
f'>> Max VRAM used for this generation:',
'%4.2fG.' % (torch.cuda.max_memory_allocated() / 1e9),
'Current VRAM utilization:',
'%4.2fG' % (torch.cuda.memory_allocated() / 1e9),
)
self.session_peakmem = max(
self.session_peakmem, torch.cuda.max_memory_allocated()
)
print(
f'>> Max VRAM used since script start: ',
'%4.2fG' % (self.session_peakmem / 1e9),
)
return results
# this needs to be generalized to all sorts of postprocessors, which should be wrapped
# in a nice harmonized call signature. For now we have a bunch of if/elses!
def apply_postprocessor(
self,
image_path,
tool = 'gfpgan', # one of 'upscale', 'gfpgan', 'codeformer', 'outpaint', or 'embiggen'
facetool_strength = 0.0,
codeformer_fidelity = 0.75,
upscale = None,
out_direction = None,
outcrop = [],
save_original = True, # to get new name
callback = None,
opt = None,
):
# retrieve the seed from the image;
seed = None
prompt = None
args = metadata_from_png(image_path)
seed = opt.seed or args.seed
if seed is None or seed < 0:
seed = random.randrange(0, np.iinfo(np.uint32).max)
prompt = opt.prompt or args.prompt or ''
print(f'>> using seed {seed} and prompt "{prompt}" for {image_path}')
# try to reuse the same filename prefix as the original file.
# we take everything up to the first period
prefix = None
m = re.match(r'^([^.]+)\.',os.path.basename(image_path))
if m:
prefix = m.groups()[0]
# face fixers and esrgan take an Image, but embiggen takes a path
image = Image.open(image_path)
# used by multiple postfixers
# todo: cross-attention control
uc, c, extra_conditioning_info = get_uc_and_c_and_ec(
prompt, model =self.model,
skip_normalize=opt.skip_normalize,
log_tokens =opt.log_tokenization
)
if tool in ('gfpgan','codeformer','upscale'):
if tool == 'gfpgan':
facetool = 'gfpgan'
elif tool == 'codeformer':
facetool = 'codeformer'
elif tool == 'upscale':
facetool = 'gfpgan' # but won't be run
facetool_strength = 0
return self.upscale_and_reconstruct(
[[image,seed]],
facetool = facetool,
strength = facetool_strength,
codeformer_fidelity = codeformer_fidelity,
save_original = save_original,
upscale = upscale,
image_callback = callback,
prefix = prefix,
)
elif tool == 'outcrop':
from ldm.invoke.restoration.outcrop import Outcrop
extend_instructions = {}
for direction,pixels in _pairwise(opt.outcrop):
try:
extend_instructions[direction]=int(pixels)
except ValueError:
print(f'** invalid extension instruction. Use <directions> <pixels>..., as in "top 64 left 128 right 64 bottom 64"')
opt.seed = seed
opt.prompt = prompt
if len(extend_instructions) > 0:
restorer = Outcrop(image,self,)
return restorer.process (
extend_instructions,
opt = opt,
orig_opt = args,
image_callback = callback,
prefix = prefix,
)
elif tool == 'embiggen':
# fetch the metadata from the image
generator = self.select_generator(embiggen=True)
opt.strength = opt.embiggen_strength or 0.40
print(f'>> Setting img2img strength to {opt.strength} for happy embiggening')
generator.generate(
prompt,
sampler = self.sampler,
steps = opt.steps,
cfg_scale = opt.cfg_scale,
ddim_eta = self.ddim_eta,
conditioning= (uc, c, extra_conditioning_info),
init_img = image_path, # not the Image! (sigh)
init_image = image, # embiggen wants both! (sigh)
strength = opt.strength,
width = opt.width,
height = opt.height,
embiggen = opt.embiggen,
embiggen_tiles = opt.embiggen_tiles,
embiggen_strength = opt.embiggen_strength,
image_callback = callback,
)
elif tool == 'outpaint':
from ldm.invoke.restoration.outpaint import Outpaint
restorer = Outpaint(image,self)
return restorer.process(
opt,
args,
image_callback = callback,
prefix = prefix
)
elif tool is None:
print(f'* please provide at least one postprocessing option, such as -G or -U')
return None
else:
print(f'* postprocessing tool {tool} is not yet supported')
return None
def select_generator(
self,
init_image:Image.Image=None,
mask_image:Image.Image=None,
embiggen:bool=False,
hires_fix:bool=False,
force_outpaint:bool=False,
):
inpainting_model_in_use = self.sampler.uses_inpainting_model()
if hires_fix:
return self._make_txt2img2img()
if embiggen is not None:
return self._make_embiggen()
if inpainting_model_in_use:
return self._make_omnibus()
if ((init_image is not None) and (mask_image is not None)) or force_outpaint:
return self._make_inpaint()
if init_image is not None:
return self._make_img2img()
return self._make_txt2img()
def _make_images(
self,
img,
mask,
width,
height,
fit=False,
text_mask=None,
invert_mask=False,
force_outpaint=False,
):
init_image = None
init_mask = None
if not img:
return None, None
image = self._load_img(img)
if image.width < self.width and image.height < self.height:
print(f'>> WARNING: img2img and inpainting may produce unexpected results with initial images smaller than {self.width}x{self.height} in both dimensions')
# if image has a transparent area and no mask was provided, then try to generate mask
if self._has_transparency(image):
self._transparency_check_and_warning(image, mask, force_outpaint)
init_mask = self._create_init_mask(image, width, height, fit=fit)
if (image.width * image.height) > (self.width * self.height) and self.size_matters:
print(">> This input is larger than your defaults. If you run out of memory, please use a smaller image.")
self.size_matters = False
init_image = self._create_init_image(image,width,height,fit=fit)
if mask:
mask_image = self._load_img(mask)
init_mask = self._create_init_mask(mask_image,width,height,fit=fit)
elif text_mask:
init_mask = self._txt2mask(image, text_mask, width, height, fit=fit)
if invert_mask:
init_mask = ImageOps.invert(init_mask)
return init_image,init_mask
# lots o' repeated code here! Turn into a make_func()
def _make_base(self):
if not self.generators.get('base'):
from ldm.invoke.generator import Generator
self.generators['base'] = Generator(self.model, self.precision)
return self.generators['base']
def _make_img2img(self):
if not self.generators.get('img2img'):
from ldm.invoke.generator.img2img import Img2Img
self.generators['img2img'] = Img2Img(self.model, self.precision)
self.generators['img2img'].free_gpu_mem = self.free_gpu_mem
return self.generators['img2img']
def _make_embiggen(self):
if not self.generators.get('embiggen'):
from ldm.invoke.generator.embiggen import Embiggen
self.generators['embiggen'] = Embiggen(self.model, self.precision)
return self.generators['embiggen']
def _make_txt2img(self):
if not self.generators.get('txt2img'):
from ldm.invoke.generator.txt2img import Txt2Img
self.generators['txt2img'] = Txt2Img(self.model, self.precision)
self.generators['txt2img'].free_gpu_mem = self.free_gpu_mem
return self.generators['txt2img']
def _make_txt2img2img(self):
if not self.generators.get('txt2img2'):
from ldm.invoke.generator.txt2img2img import Txt2Img2Img
self.generators['txt2img2'] = Txt2Img2Img(self.model, self.precision)
self.generators['txt2img2'].free_gpu_mem = self.free_gpu_mem
return self.generators['txt2img2']
def _make_inpaint(self):
if not self.generators.get('inpaint'):
from ldm.invoke.generator.inpaint import Inpaint
self.generators['inpaint'] = Inpaint(self.model, self.precision)
return self.generators['inpaint']
# "omnibus" supports the runwayML custom inpainting model, which does
# txt2img, img2img and inpainting using slight variations on the same code
def _make_omnibus(self):
if not self.generators.get('omnibus'):
from ldm.invoke.generator.omnibus import Omnibus
self.generators['omnibus'] = Omnibus(self.model, self.precision)
self.generators['omnibus'].free_gpu_mem = self.free_gpu_mem
return self.generators['omnibus']
def load_model(self):
'''
preload model identified in self.model_name
'''
self.set_model(self.model_name)
def set_model(self,model_name):
"""
Given the name of a model defined in models.yaml, will load and initialize it
and return the model object. Previously-used models will be cached.
"""
if self.model_name == model_name and self.model is not None:
return self.model
# the model cache does the loading and offloading
cache = self.model_cache
if not cache.valid_model(model_name):
print(f'** "{model_name}" is not a known model name. Please check your models.yaml file')
return self.model
cache.print_vram_usage()
# have to get rid of all references to model in order
# to free it from GPU memory
self.model = None
self.sampler = None
self.generators = {}
gc.collect()
model_data = cache.get_model(model_name)
if model_data is None: # restore previous
model_data = cache.get_model(self.model_name)
model_name = self.model_name # addresses Issue #1547
self.model = model_data['model']
self.width = model_data['width']
self.height= model_data['height']
self.model_hash = model_data['hash']
# uncache generators so they pick up new models
self.generators = {}
seed_everything(random.randrange(0, np.iinfo(np.uint32).max))
if self.embedding_path is not None:
self.model.embedding_manager.load(
self.embedding_path, self.precision == 'float32' or self.precision == 'autocast'
)
self._set_sampler()
self.model_name = model_name
return self.model
def load_concepts(self,concepts:list[str]):
self.model.embedding_manager.load_concepts(concepts, self.precision=='float32' or self.precision=='autocast')
def concept_lib(self)->Concepts:
return self.model.embedding_manager.concepts_library
def correct_colors(self,
image_list,
reference_image_path,
image_callback = None):
reference_image = Image.open(reference_image_path)
correction_target = cv2.cvtColor(np.asarray(reference_image),
cv2.COLOR_RGB2LAB)
for r in image_list:
image, seed = r
image = cv2.cvtColor(np.asarray(image),
cv2.COLOR_RGB2LAB)
image = skimage.exposure.match_histograms(image,
correction_target,
channel_axis=2)
image = Image.fromarray(
cv2.cvtColor(image, cv2.COLOR_LAB2RGB).astype("uint8")
)
if image_callback is not None:
image_callback(image, seed)
else:
r[0] = image
def upscale_and_reconstruct(self,
image_list,
facetool = 'gfpgan',
upscale = None,
strength = 0.0,
codeformer_fidelity = 0.75,
save_original = False,
image_callback = None,
prefix = None,
):
for r in image_list:
image, seed = r
try:
if strength > 0:
if self.gfpgan is not None or self.codeformer is not None:
if facetool == 'gfpgan':
if self.gfpgan is None:
print('>> GFPGAN not found. Face restoration is disabled.')
else:
image = self.gfpgan.process(image, strength, seed)
if facetool == 'codeformer':
if self.codeformer is None:
print('>> CodeFormer not found. Face restoration is disabled.')
else:
cf_device = 'cpu' if str(self.device) == 'mps' else self.device
image = self.codeformer.process(image=image, strength=strength, device=cf_device, seed=seed, fidelity=codeformer_fidelity)
else:
print(">> Face Restoration is disabled.")
if upscale is not None:
if self.esrgan is not None:
if len(upscale) < 2:
upscale.append(0.75)
image = self.esrgan.process(
image, upscale[1], seed, int(upscale[0]))
else:
print(">> ESRGAN is disabled. Image not upscaled.")
except Exception as e:
print(
f'>> Error running RealESRGAN or GFPGAN. Your image was not upscaled.\n{e}'
)
if image_callback is not None:
image_callback(image, seed, upscaled=True, use_prefix=prefix)
else:
r[0] = image
def apply_textmask(self, image_path:str, prompt:str, callback, threshold:float=0.5):
assert os.path.exists(image_path), f'** "{image_path}" not found. Please enter the name of an existing image file to mask **'
basename,_ = os.path.splitext(os.path.basename(image_path))
if self.txt2mask is None:
self.txt2mask = Txt2Mask(device = self.device, refined=True)
segmented = self.txt2mask.segment(image_path,prompt)
trans = segmented.to_transparent()
inverse = segmented.to_transparent(invert=True)
mask = segmented.to_mask(threshold)
path_filter = re.compile(r'[<>:"/\\|?*]')
safe_prompt = path_filter.sub('_', prompt)[:50].rstrip(' .')
callback(trans,f'{safe_prompt}.deselected',use_prefix=basename)
callback(inverse,f'{safe_prompt}.selected',use_prefix=basename)
callback(mask,f'{safe_prompt}.masked',use_prefix=basename)
# to help WebGUI - front end to generator util function
def sample_to_image(self, samples):
return self._make_base().sample_to_image(samples)
def sample_to_lowres_estimated_image(self, samples):
return self._make_base().sample_to_lowres_estimated_image(samples)
# very repetitive code - can this be simplified? The KSampler names are
# consistent, at least
def _set_sampler(self):
msg = f'>> Setting Sampler to {self.sampler_name}'
if self.sampler_name == 'plms':
self.sampler = PLMSSampler(self.model, device=self.device)
elif self.sampler_name == 'ddim':
self.sampler = DDIMSampler(self.model, device=self.device)
elif self.sampler_name == 'k_dpm_2_a':
self.sampler = KSampler(self.model, 'dpm_2_ancestral', device=self.device)
elif self.sampler_name == 'k_dpm_2':
self.sampler = KSampler(self.model, 'dpm_2', device=self.device)
elif self.sampler_name == 'k_dpmpp_2_a':
self.sampler = KSampler(self.model, 'dpmpp_2s_ancestral', device=self.device)
elif self.sampler_name == 'k_dpmpp_2':
self.sampler = KSampler(self.model, 'dpmpp_2m', device=self.device)
elif self.sampler_name == 'k_euler_a':
self.sampler = KSampler(self.model, 'euler_ancestral', device=self.device)
elif self.sampler_name == 'k_euler':
self.sampler = KSampler(self.model, 'euler', device=self.device)
elif self.sampler_name == 'k_heun':
self.sampler = KSampler(self.model, 'heun', device=self.device)
elif self.sampler_name == 'k_lms':
self.sampler = KSampler(self.model, 'lms', device=self.device)
else:
msg = f'>> Unsupported Sampler: {self.sampler_name}, Defaulting to plms'
self.sampler = PLMSSampler(self.model, device=self.device)
print(msg)
def _load_img(self, img)->Image:
if isinstance(img, Image.Image):
image = img
print(
f'>> using provided input image of size {image.width}x{image.height}'
)
elif isinstance(img, str):
assert os.path.exists(img), f'>> {img}: File not found'
image = Image.open(img)
print(
f'>> loaded input image of size {image.width}x{image.height} from {img}'
)
else:
image = Image.open(img)
print(
f'>> loaded input image of size {image.width}x{image.height}'
)
image = ImageOps.exif_transpose(image)
return image
def _create_init_image(self, image: Image.Image, width, height, fit=True):
if image.mode != 'RGBA':
image = image.convert('RGBA')
image = self._fit_image(image, (width, height)) if fit else self._squeeze_image(image)
return image
def _create_init_mask(self, image, width, height, fit=True):
# convert into a black/white mask
image = self._image_to_mask(image)
image = image.convert('RGB')
image = self._fit_image(image, (width, height)) if fit else self._squeeze_image(image)
return image
# The mask is expected to have the region to be inpainted
# with alpha transparency. It converts it into a black/white
# image with the transparent part black.
def _image_to_mask(self, mask_image: Image.Image, invert=False) -> Image:
# Obtain the mask from the transparency channel
if mask_image.mode == 'L':
mask = mask_image
elif mask_image.mode in ('RGB', 'P'):
mask = mask_image.convert('L')
else:
# Obtain the mask from the transparency channel
mask = Image.new(mode="L", size=mask_image.size, color=255)
mask.putdata(mask_image.getdata(band=3))
if invert:
mask = ImageOps.invert(mask)
return mask
def _txt2mask(self, image:Image, text_mask:list, width, height, fit=True) -> Image:
prompt = text_mask[0]
confidence_level = text_mask[1] if len(text_mask)>1 else 0.5
if self.txt2mask is None:
self.txt2mask = Txt2Mask(device = self.device)
segmented = self.txt2mask.segment(image, prompt)
mask = segmented.to_mask(float(confidence_level))
mask = mask.convert('RGB')
mask = self._fit_image(mask, (width, height)) if fit else self._squeeze_image(mask)
return mask
def _has_transparency(self, image):
if image.info.get("transparency", None) is not None:
return True
if image.mode == "P":
transparent = image.info.get("transparency", -1)
for _, index in image.getcolors():
if index == transparent:
return True
elif image.mode == "RGBA":
extrema = image.getextrema()
if extrema[3][0] < 255:
return True
return False
def _check_for_erasure(self, image:Image.Image)->bool:
if image.mode not in ('RGBA','RGB'):
return False
width, height = image.size
pixdata = image.load()
colored = 0
for y in range(height):
for x in range(width):
if pixdata[x, y][3] == 0:
r, g, b, _ = pixdata[x, y]
if (r, g, b) != (0, 0, 0) and \
(r, g, b) != (255, 255, 255):
colored += 1
return colored == 0
def _transparency_check_and_warning(self,image, mask, force_outpaint=False):
if not mask:
print(
'>> Initial image has transparent areas. Will inpaint in these regions.')
if (not force_outpaint) and self._check_for_erasure(image):
print(
'>> WARNING: Colors underneath the transparent region seem to have been erased.\n',
'>> Inpainting will be suboptimal. Please preserve the colors when making\n',
'>> a transparency mask, or provide mask explicitly using --init_mask (-M).'
)
def _squeeze_image(self, image):
x, y, resize_needed = self._resolution_check(image.width, image.height)
if resize_needed:
return InitImageResizer(image).resize(x, y)
return image
def _fit_image(self, image, max_dimensions):
w, h = max_dimensions
print(
f'>> image will be resized to fit inside a box {w}x{h} in size.'
)
# note that InitImageResizer does the multiple of 64 truncation internally
image = InitImageResizer(image).resize(width=w, height=h)
print(
f'>> after adjusting image dimensions to be multiples of 64, init image is {image.width}x{image.height}'
)
return image
def _resolution_check(self, width, height, log=False):
resize_needed = False
w, h = map(
lambda x: x - x % 64, (width, height)
) # resize to integer multiple of 64
if h != height or w != width:
if log:
print(
f'>> Provided width and height must be multiples of 64. Auto-resizing to {w}x{h}'
)
height = h
width = w
resize_needed = True
return width, height, resize_needed
def _has_cuda(self):
return self.device.type == 'cuda'
def write_intermediate_images(self,modulus,path):
counter = -1
if not os.path.exists(path):
os.makedirs(path)
def callback(img):
nonlocal counter
counter += 1
if counter % modulus != 0:
return;
image = self.sample_to_image(img)
image.save(os.path.join(path,f'{counter:03}.png'),'PNG')
return callback
def _pairwise(iterable):
"s -> (s0, s1), (s2, s3), (s4, s5), ..."
a = iter(iterable)
return zip(a, a)