mirror of
https://github.com/invoke-ai/InvokeAI
synced 2024-08-30 20:32:17 +00:00
799dc6d0df
This was a difficult merge because both PR #1108 and #1243 made changes to obscure parts of the diffusion code. - prompt weighting, merging and cross-attention working - cross-attention does not work with runwayML inpainting model, but weighting and merging are tested and working - CLI command parsing code rewritten in order to get embedded quotes right - --hires now works with runwayML inpainting - --embiggen does not work with runwayML and will give an error - Added an --invert option to invert masks applied to inpainting - Updated documentation
502 lines
26 KiB
Python
502 lines
26 KiB
Python
'''
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ldm.invoke.generator.embiggen descends from ldm.invoke.generator
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and generates with ldm.invoke.generator.img2img
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'''
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import torch
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import numpy as np
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from tqdm import trange
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from PIL import Image
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from ldm.invoke.generator.base import Generator
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from ldm.invoke.generator.img2img import Img2Img
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from ldm.invoke.devices import choose_autocast
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from ldm.models.diffusion.ddim import DDIMSampler
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class Embiggen(Generator):
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def __init__(self, model, precision):
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super().__init__(model, precision)
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self.init_latent = None
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# Replace generate because Embiggen doesn't need/use most of what it does normallly
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def generate(self,prompt,iterations=1,seed=None,
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image_callback=None, step_callback=None,
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**kwargs):
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scope = choose_autocast(self.precision)
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make_image = self.get_make_image(
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prompt,
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step_callback = step_callback,
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**kwargs
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)
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results = []
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seed = seed if seed else self.new_seed()
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# Noise will be generated by the Img2Img generator when called
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with scope(self.model.device.type), self.model.ema_scope():
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for n in trange(iterations, desc='Generating'):
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# make_image will call Img2Img which will do the equivalent of get_noise itself
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image = make_image()
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results.append([image, seed])
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if image_callback is not None:
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image_callback(image, seed)
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seed = self.new_seed()
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return results
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@torch.no_grad()
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def get_make_image(
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self,
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prompt,
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sampler,
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steps,
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cfg_scale,
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ddim_eta,
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conditioning,
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init_img,
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strength,
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width,
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height,
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embiggen,
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embiggen_tiles,
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step_callback=None,
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**kwargs
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):
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"""
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Returns a function returning an image derived from the prompt and multi-stage twice-baked potato layering over the img2img on the initial image
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Return value depends on the seed at the time you call it
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"""
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assert not sampler.uses_inpainting_model(), "--embiggen is not supported by inpainting models"
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# Construct embiggen arg array, and sanity check arguments
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if embiggen == None: # embiggen can also be called with just embiggen_tiles
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embiggen = [1.0] # If not specified, assume no scaling
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elif embiggen[0] < 0:
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embiggen[0] = 1.0
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print(
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'>> Embiggen scaling factor cannot be negative, fell back to the default of 1.0 !')
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if len(embiggen) < 2:
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embiggen.append(0.75)
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elif embiggen[1] > 1.0 or embiggen[1] < 0:
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embiggen[1] = 0.75
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print('>> Embiggen upscaling strength for ESRGAN must be between 0 and 1, fell back to the default of 0.75 !')
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if len(embiggen) < 3:
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embiggen.append(0.25)
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elif embiggen[2] < 0:
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embiggen[2] = 0.25
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print('>> Overlap size for Embiggen must be a positive ratio between 0 and 1 OR a number of pixels, fell back to the default of 0.25 !')
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# Convert tiles from their user-freindly count-from-one to count-from-zero, because we need to do modulo math
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# and then sort them, because... people.
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if embiggen_tiles:
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embiggen_tiles = list(map(lambda n: n-1, embiggen_tiles))
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embiggen_tiles.sort()
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if strength >= 0.5:
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print(f'* WARNING: Embiggen may produce mirror motifs if the strength (-f) is too high (currently {strength}). Try values between 0.35-0.45.')
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# Prep img2img generator, since we wrap over it
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gen_img2img = Img2Img(self.model,self.precision)
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# Open original init image (not a tensor) to manipulate
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initsuperimage = Image.open(init_img)
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with Image.open(init_img) as img:
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initsuperimage = img.convert('RGB')
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# Size of the target super init image in pixels
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initsuperwidth, initsuperheight = initsuperimage.size
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# Increase by scaling factor if not already resized, using ESRGAN as able
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if embiggen[0] != 1.0:
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initsuperwidth = round(initsuperwidth*embiggen[0])
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initsuperheight = round(initsuperheight*embiggen[0])
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if embiggen[1] > 0: # No point in ESRGAN upscaling if strength is set zero
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from ldm.invoke.restoration.realesrgan import ESRGAN
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esrgan = ESRGAN()
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print(
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f'>> ESRGAN upscaling init image prior to cutting with Embiggen with strength {embiggen[1]}')
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if embiggen[0] > 2:
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initsuperimage = esrgan.process(
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initsuperimage,
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embiggen[1], # upscale strength
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self.seed,
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4, # upscale scale
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)
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else:
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initsuperimage = esrgan.process(
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initsuperimage,
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embiggen[1], # upscale strength
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self.seed,
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2, # upscale scale
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)
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# We could keep recursively re-running ESRGAN for a requested embiggen[0] larger than 4x
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# but from personal experiance it doesn't greatly improve anything after 4x
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# Resize to target scaling factor resolution
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initsuperimage = initsuperimage.resize(
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(initsuperwidth, initsuperheight), Image.Resampling.LANCZOS)
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# Use width and height as tile widths and height
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# Determine buffer size in pixels
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if embiggen[2] < 1:
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if embiggen[2] < 0:
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embiggen[2] = 0
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overlap_size_x = round(embiggen[2] * width)
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overlap_size_y = round(embiggen[2] * height)
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else:
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overlap_size_x = round(embiggen[2])
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overlap_size_y = round(embiggen[2])
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# With overall image width and height known, determine how many tiles we need
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def ceildiv(a, b):
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return -1 * (-a // b)
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# X and Y needs to be determined independantly (we may have savings on one based on the buffer pixel count)
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# (initsuperwidth - width) is the area remaining to the right that we need to layers tiles to fill
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# (width - overlap_size_x) is how much new we can fill with a single tile
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emb_tiles_x = 1
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emb_tiles_y = 1
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if (initsuperwidth - width) > 0:
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emb_tiles_x = ceildiv(initsuperwidth - width,
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width - overlap_size_x) + 1
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if (initsuperheight - height) > 0:
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emb_tiles_y = ceildiv(initsuperheight - height,
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height - overlap_size_y) + 1
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# Sanity
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assert emb_tiles_x > 1 or emb_tiles_y > 1, f'ERROR: Based on the requested dimensions of {initsuperwidth}x{initsuperheight} and tiles of {width}x{height} you don\'t need to Embiggen! Check your arguments.'
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# Prep alpha layers --------------
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# https://stackoverflow.com/questions/69321734/how-to-create-different-transparency-like-gradient-with-python-pil
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# agradientL is Left-side transparent
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agradientL = Image.linear_gradient('L').rotate(
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90).resize((overlap_size_x, height))
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# agradientT is Top-side transparent
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agradientT = Image.linear_gradient('L').resize((width, overlap_size_y))
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# radial corner is the left-top corner, made full circle then cut to just the left-top quadrant
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agradientC = Image.new('L', (256, 256))
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for y in range(256):
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for x in range(256):
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# Find distance to lower right corner (numpy takes arrays)
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distanceToLR = np.sqrt([(255 - x) ** 2 + (255 - y) ** 2])[0]
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# Clamp values to max 255
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if distanceToLR > 255:
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distanceToLR = 255
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#Place the pixel as invert of distance
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agradientC.putpixel((x, y), round(255 - distanceToLR))
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# Create alternative asymmetric diagonal corner to use on "tailing" intersections to prevent hard edges
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# Fits for a left-fading gradient on the bottom side and full opacity on the right side.
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agradientAsymC = Image.new('L', (256, 256))
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for y in range(256):
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for x in range(256):
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value = round(max(0, x-(255-y)) * (255 / max(1,y)))
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#Clamp values
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value = max(0, value)
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value = min(255, value)
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agradientAsymC.putpixel((x, y), value)
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# Create alpha layers default fully white
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alphaLayerL = Image.new("L", (width, height), 255)
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alphaLayerT = Image.new("L", (width, height), 255)
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alphaLayerLTC = Image.new("L", (width, height), 255)
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# Paste gradients into alpha layers
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alphaLayerL.paste(agradientL, (0, 0))
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alphaLayerT.paste(agradientT, (0, 0))
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alphaLayerLTC.paste(agradientL, (0, 0))
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alphaLayerLTC.paste(agradientT, (0, 0))
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alphaLayerLTC.paste(agradientC.resize((overlap_size_x, overlap_size_y)), (0, 0))
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# make masks with an asymmetric upper-right corner so when the curved transparent corner of the next tile
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# to its right is placed it doesn't reveal a hard trailing semi-transparent edge in the overlapping space
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alphaLayerTaC = alphaLayerT.copy()
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alphaLayerTaC.paste(agradientAsymC.rotate(270).resize((overlap_size_x, overlap_size_y)), (width - overlap_size_x, 0))
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alphaLayerLTaC = alphaLayerLTC.copy()
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alphaLayerLTaC.paste(agradientAsymC.rotate(270).resize((overlap_size_x, overlap_size_y)), (width - overlap_size_x, 0))
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if embiggen_tiles:
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# Individual unconnected sides
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alphaLayerR = Image.new("L", (width, height), 255)
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alphaLayerR.paste(agradientL.rotate(
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180), (width - overlap_size_x, 0))
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alphaLayerB = Image.new("L", (width, height), 255)
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alphaLayerB.paste(agradientT.rotate(
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180), (0, height - overlap_size_y))
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alphaLayerTB = Image.new("L", (width, height), 255)
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alphaLayerTB.paste(agradientT, (0, 0))
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alphaLayerTB.paste(agradientT.rotate(
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180), (0, height - overlap_size_y))
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alphaLayerLR = Image.new("L", (width, height), 255)
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alphaLayerLR.paste(agradientL, (0, 0))
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alphaLayerLR.paste(agradientL.rotate(
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180), (width - overlap_size_x, 0))
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# Sides and corner Layers
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alphaLayerRBC = Image.new("L", (width, height), 255)
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alphaLayerRBC.paste(agradientL.rotate(
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180), (width - overlap_size_x, 0))
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alphaLayerRBC.paste(agradientT.rotate(
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180), (0, height - overlap_size_y))
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alphaLayerRBC.paste(agradientC.rotate(180).resize(
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(overlap_size_x, overlap_size_y)), (width - overlap_size_x, height - overlap_size_y))
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alphaLayerLBC = Image.new("L", (width, height), 255)
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alphaLayerLBC.paste(agradientL, (0, 0))
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alphaLayerLBC.paste(agradientT.rotate(
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180), (0, height - overlap_size_y))
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alphaLayerLBC.paste(agradientC.rotate(90).resize(
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(overlap_size_x, overlap_size_y)), (0, height - overlap_size_y))
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alphaLayerRTC = Image.new("L", (width, height), 255)
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alphaLayerRTC.paste(agradientL.rotate(
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180), (width - overlap_size_x, 0))
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alphaLayerRTC.paste(agradientT, (0, 0))
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alphaLayerRTC.paste(agradientC.rotate(270).resize(
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(overlap_size_x, overlap_size_y)), (width - overlap_size_x, 0))
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# All but X layers
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alphaLayerABT = Image.new("L", (width, height), 255)
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alphaLayerABT.paste(alphaLayerLBC, (0, 0))
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alphaLayerABT.paste(agradientL.rotate(
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180), (width - overlap_size_x, 0))
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alphaLayerABT.paste(agradientC.rotate(180).resize(
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(overlap_size_x, overlap_size_y)), (width - overlap_size_x, height - overlap_size_y))
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alphaLayerABL = Image.new("L", (width, height), 255)
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alphaLayerABL.paste(alphaLayerRTC, (0, 0))
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alphaLayerABL.paste(agradientT.rotate(
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180), (0, height - overlap_size_y))
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alphaLayerABL.paste(agradientC.rotate(180).resize(
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(overlap_size_x, overlap_size_y)), (width - overlap_size_x, height - overlap_size_y))
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alphaLayerABR = Image.new("L", (width, height), 255)
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alphaLayerABR.paste(alphaLayerLBC, (0, 0))
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alphaLayerABR.paste(agradientT, (0, 0))
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alphaLayerABR.paste(agradientC.resize(
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(overlap_size_x, overlap_size_y)), (0, 0))
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alphaLayerABB = Image.new("L", (width, height), 255)
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alphaLayerABB.paste(alphaLayerRTC, (0, 0))
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alphaLayerABB.paste(agradientL, (0, 0))
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alphaLayerABB.paste(agradientC.resize(
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(overlap_size_x, overlap_size_y)), (0, 0))
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# All-around layer
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alphaLayerAA = Image.new("L", (width, height), 255)
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alphaLayerAA.paste(alphaLayerABT, (0, 0))
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alphaLayerAA.paste(agradientT, (0, 0))
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alphaLayerAA.paste(agradientC.resize(
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(overlap_size_x, overlap_size_y)), (0, 0))
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alphaLayerAA.paste(agradientC.rotate(270).resize(
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(overlap_size_x, overlap_size_y)), (width - overlap_size_x, 0))
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# Clean up temporary gradients
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del agradientL
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del agradientT
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del agradientC
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def make_image():
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# Make main tiles -------------------------------------------------
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if embiggen_tiles:
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print(f'>> Making {len(embiggen_tiles)} Embiggen tiles...')
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else:
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print(
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f'>> Making {(emb_tiles_x * emb_tiles_y)} Embiggen tiles ({emb_tiles_x}x{emb_tiles_y})...')
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emb_tile_store = []
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# Although we could use the same seed for every tile for determinism, at higher strengths this may
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# produce duplicated structures for each tile and make the tiling effect more obvious
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# instead track and iterate a local seed we pass to Img2Img
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seed = self.seed
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seedintlimit = np.iinfo(np.uint32).max - 1 # only retreive this one from numpy
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for tile in range(emb_tiles_x * emb_tiles_y):
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# Don't iterate on first tile
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if tile != 0:
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if seed < seedintlimit:
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seed += 1
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else:
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seed = 0
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# Determine if this is a re-run and replace
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if embiggen_tiles and not tile in embiggen_tiles:
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continue
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# Get row and column entries
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emb_row_i = tile // emb_tiles_x
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emb_column_i = tile % emb_tiles_x
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# Determine bounds to cut up the init image
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# Determine upper-left point
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if emb_column_i + 1 == emb_tiles_x:
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left = initsuperwidth - width
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else:
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left = round(emb_column_i * (width - overlap_size_x))
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if emb_row_i + 1 == emb_tiles_y:
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top = initsuperheight - height
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else:
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top = round(emb_row_i * (height - overlap_size_y))
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right = left + width
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bottom = top + height
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# Cropped image of above dimension (does not modify the original)
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newinitimage = initsuperimage.crop((left, top, right, bottom))
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# DEBUG:
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# newinitimagepath = init_img[0:-4] + f'_emb_Ti{tile}.png'
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# newinitimage.save(newinitimagepath)
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if embiggen_tiles:
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print(
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f'Making tile #{tile + 1} ({embiggen_tiles.index(tile) + 1} of {len(embiggen_tiles)} requested)')
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else:
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print(
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f'Starting {tile + 1} of {(emb_tiles_x * emb_tiles_y)} tiles')
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# create a torch tensor from an Image
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newinitimage = np.array(
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newinitimage).astype(np.float32) / 255.0
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newinitimage = newinitimage[None].transpose(0, 3, 1, 2)
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newinitimage = torch.from_numpy(newinitimage)
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newinitimage = 2.0 * newinitimage - 1.0
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newinitimage = newinitimage.to(self.model.device)
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tile_results = gen_img2img.generate(
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prompt,
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iterations = 1,
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seed = seed,
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sampler = DDIMSampler(self.model, device=self.model.device),
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steps = steps,
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cfg_scale = cfg_scale,
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conditioning = conditioning,
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ddim_eta = ddim_eta,
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image_callback = None, # called only after the final image is generated
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step_callback = step_callback, # called after each intermediate image is generated
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width = width,
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height = height,
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init_image = newinitimage, # notice that init_image is different from init_img
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mask_image = None,
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strength = strength,
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)
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emb_tile_store.append(tile_results[0][0])
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# DEBUG (but, also has other uses), worth saving if you want tiles without a transparency overlap to manually composite
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# emb_tile_store[-1].save(init_img[0:-4] + f'_emb_To{tile}.png')
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del newinitimage
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# Sanity check we have them all
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if len(emb_tile_store) == (emb_tiles_x * emb_tiles_y) or (embiggen_tiles != [] and len(emb_tile_store) == len(embiggen_tiles)):
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outputsuperimage = Image.new(
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"RGBA", (initsuperwidth, initsuperheight))
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if embiggen_tiles:
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outputsuperimage.alpha_composite(
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initsuperimage.convert('RGBA'), (0, 0))
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for tile in range(emb_tiles_x * emb_tiles_y):
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if embiggen_tiles:
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if tile in embiggen_tiles:
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intileimage = emb_tile_store.pop(0)
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else:
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continue
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else:
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intileimage = emb_tile_store[tile]
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intileimage = intileimage.convert('RGBA')
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# Get row and column entries
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emb_row_i = tile // emb_tiles_x
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emb_column_i = tile % emb_tiles_x
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if emb_row_i == 0 and emb_column_i == 0 and not embiggen_tiles:
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left = 0
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top = 0
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else:
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# Determine upper-left point
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if emb_column_i + 1 == emb_tiles_x:
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left = initsuperwidth - width
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else:
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left = round(emb_column_i *
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(width - overlap_size_x))
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if emb_row_i + 1 == emb_tiles_y:
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top = initsuperheight - height
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else:
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top = round(emb_row_i * (height - overlap_size_y))
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# Handle gradients for various conditions
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# Handle emb_rerun case
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if embiggen_tiles:
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# top of image
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if emb_row_i == 0:
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if emb_column_i == 0:
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if (tile+1) in embiggen_tiles: # Look-ahead right
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if (tile+emb_tiles_x) not in embiggen_tiles: # Look-ahead down
|
|
intileimage.putalpha(alphaLayerB)
|
|
# Otherwise do nothing on this tile
|
|
elif (tile+emb_tiles_x) in embiggen_tiles: # Look-ahead down only
|
|
intileimage.putalpha(alphaLayerR)
|
|
else:
|
|
intileimage.putalpha(alphaLayerRBC)
|
|
elif emb_column_i == emb_tiles_x - 1:
|
|
if (tile+emb_tiles_x) in embiggen_tiles: # Look-ahead down
|
|
intileimage.putalpha(alphaLayerL)
|
|
else:
|
|
intileimage.putalpha(alphaLayerLBC)
|
|
else:
|
|
if (tile+1) in embiggen_tiles: # Look-ahead right
|
|
if (tile+emb_tiles_x) in embiggen_tiles: # Look-ahead down
|
|
intileimage.putalpha(alphaLayerL)
|
|
else:
|
|
intileimage.putalpha(alphaLayerLBC)
|
|
elif (tile+emb_tiles_x) in embiggen_tiles: # Look-ahead down only
|
|
intileimage.putalpha(alphaLayerLR)
|
|
else:
|
|
intileimage.putalpha(alphaLayerABT)
|
|
# bottom of image
|
|
elif emb_row_i == emb_tiles_y - 1:
|
|
if emb_column_i == 0:
|
|
if (tile+1) in embiggen_tiles: # Look-ahead right
|
|
intileimage.putalpha(alphaLayerTaC)
|
|
else:
|
|
intileimage.putalpha(alphaLayerRTC)
|
|
elif emb_column_i == emb_tiles_x - 1:
|
|
# No tiles to look ahead to
|
|
intileimage.putalpha(alphaLayerLTC)
|
|
else:
|
|
if (tile+1) in embiggen_tiles: # Look-ahead right
|
|
intileimage.putalpha(alphaLayerLTaC)
|
|
else:
|
|
intileimage.putalpha(alphaLayerABB)
|
|
# vertical middle of image
|
|
else:
|
|
if emb_column_i == 0:
|
|
if (tile+1) in embiggen_tiles: # Look-ahead right
|
|
if (tile+emb_tiles_x) in embiggen_tiles: # Look-ahead down
|
|
intileimage.putalpha(alphaLayerTaC)
|
|
else:
|
|
intileimage.putalpha(alphaLayerTB)
|
|
elif (tile+emb_tiles_x) in embiggen_tiles: # Look-ahead down only
|
|
intileimage.putalpha(alphaLayerRTC)
|
|
else:
|
|
intileimage.putalpha(alphaLayerABL)
|
|
elif emb_column_i == emb_tiles_x - 1:
|
|
if (tile+emb_tiles_x) in embiggen_tiles: # Look-ahead down
|
|
intileimage.putalpha(alphaLayerLTC)
|
|
else:
|
|
intileimage.putalpha(alphaLayerABR)
|
|
else:
|
|
if (tile+1) in embiggen_tiles: # Look-ahead right
|
|
if (tile+emb_tiles_x) in embiggen_tiles: # Look-ahead down
|
|
intileimage.putalpha(alphaLayerLTaC)
|
|
else:
|
|
intileimage.putalpha(alphaLayerABR)
|
|
elif (tile+emb_tiles_x) in embiggen_tiles: # Look-ahead down only
|
|
intileimage.putalpha(alphaLayerABB)
|
|
else:
|
|
intileimage.putalpha(alphaLayerAA)
|
|
# Handle normal tiling case (much simpler - since we tile left to right, top to bottom)
|
|
else:
|
|
if emb_row_i == 0 and emb_column_i >= 1:
|
|
intileimage.putalpha(alphaLayerL)
|
|
elif emb_row_i >= 1 and emb_column_i == 0:
|
|
if emb_column_i + 1 == emb_tiles_x: # If we don't have anything that can be placed to the right
|
|
intileimage.putalpha(alphaLayerT)
|
|
else:
|
|
intileimage.putalpha(alphaLayerTaC)
|
|
else:
|
|
if emb_column_i + 1 == emb_tiles_x: # If we don't have anything that can be placed to the right
|
|
intileimage.putalpha(alphaLayerLTC)
|
|
else:
|
|
intileimage.putalpha(alphaLayerLTaC)
|
|
# Layer tile onto final image
|
|
outputsuperimage.alpha_composite(intileimage, (left, top))
|
|
else:
|
|
print(f'Error: could not find all Embiggen output tiles in memory? Something must have gone wrong with img2img generation.')
|
|
|
|
# after internal loops and patching up return Embiggen image
|
|
return outputsuperimage
|
|
# end of function declaration
|
|
return make_image
|