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692 lines
28 KiB
Python
692 lines
28 KiB
Python
# Invocations for ControlNet image preprocessors
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# initial implementation by Gregg Helt, 2023
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# heavily leverages controlnet_aux package: https://github.com/patrickvonplaten/controlnet_aux
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from builtins import bool, float
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from pathlib import Path
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from typing import Dict, List, Literal, Union
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import cv2
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import numpy as np
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from controlnet_aux import (
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ContentShuffleDetector,
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LeresDetector,
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MediapipeFaceDetector,
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MidasDetector,
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MLSDdetector,
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NormalBaeDetector,
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PidiNetDetector,
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SamDetector,
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ZoeDetector,
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)
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from controlnet_aux.util import HWC3, ade_palette
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from PIL import Image
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from pydantic import BaseModel, Field, field_validator, model_validator
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from transformers import pipeline
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from transformers.pipelines import DepthEstimationPipeline
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from invokeai.app.invocations.baseinvocation import (
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BaseInvocation,
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BaseInvocationOutput,
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Classification,
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invocation,
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invocation_output,
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)
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from invokeai.app.invocations.fields import (
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FieldDescriptions,
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ImageField,
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InputField,
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OutputField,
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UIType,
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WithBoard,
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WithMetadata,
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)
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from invokeai.app.invocations.model import ModelIdentifierField
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from invokeai.app.invocations.primitives import ImageOutput
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from invokeai.app.invocations.util import validate_begin_end_step, validate_weights
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from invokeai.app.services.shared.invocation_context import InvocationContext
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from invokeai.app.util.controlnet_utils import CONTROLNET_MODE_VALUES, CONTROLNET_RESIZE_VALUES, heuristic_resize
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from invokeai.backend.image_util.canny import get_canny_edges
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from invokeai.backend.image_util.depth_anything.depth_anything_pipeline import DepthAnythingPipeline
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from invokeai.backend.image_util.dw_openpose import DWPOSE_MODELS, DWOpenposeDetector
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from invokeai.backend.image_util.hed import HEDProcessor
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from invokeai.backend.image_util.lineart import LineartProcessor
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from invokeai.backend.image_util.lineart_anime import LineartAnimeProcessor
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from invokeai.backend.image_util.util import np_to_pil, pil_to_np
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class ControlField(BaseModel):
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image: ImageField = Field(description="The control image")
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control_model: ModelIdentifierField = Field(description="The ControlNet model to use")
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control_weight: Union[float, List[float]] = Field(default=1, description="The weight given to the ControlNet")
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begin_step_percent: float = Field(
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default=0, ge=0, le=1, description="When the ControlNet is first applied (% of total steps)"
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)
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end_step_percent: float = Field(
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default=1, ge=0, le=1, description="When the ControlNet is last applied (% of total steps)"
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)
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control_mode: CONTROLNET_MODE_VALUES = Field(default="balanced", description="The control mode to use")
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resize_mode: CONTROLNET_RESIZE_VALUES = Field(default="just_resize", description="The resize mode to use")
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@field_validator("control_weight")
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@classmethod
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def validate_control_weight(cls, v):
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validate_weights(v)
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return v
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@model_validator(mode="after")
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def validate_begin_end_step_percent(self):
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validate_begin_end_step(self.begin_step_percent, self.end_step_percent)
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return self
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@invocation_output("control_output")
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class ControlOutput(BaseInvocationOutput):
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"""node output for ControlNet info"""
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# Outputs
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control: ControlField = OutputField(description=FieldDescriptions.control)
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@invocation("controlnet", title="ControlNet", tags=["controlnet"], category="controlnet", version="1.1.2")
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class ControlNetInvocation(BaseInvocation):
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"""Collects ControlNet info to pass to other nodes"""
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image: ImageField = InputField(description="The control image")
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control_model: ModelIdentifierField = InputField(
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description=FieldDescriptions.controlnet_model, ui_type=UIType.ControlNetModel
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)
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control_weight: Union[float, List[float]] = InputField(
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default=1.0, ge=-1, le=2, description="The weight given to the ControlNet"
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)
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begin_step_percent: float = InputField(
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default=0, ge=0, le=1, description="When the ControlNet is first applied (% of total steps)"
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)
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end_step_percent: float = InputField(
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default=1, ge=0, le=1, description="When the ControlNet is last applied (% of total steps)"
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)
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control_mode: CONTROLNET_MODE_VALUES = InputField(default="balanced", description="The control mode used")
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resize_mode: CONTROLNET_RESIZE_VALUES = InputField(default="just_resize", description="The resize mode used")
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@field_validator("control_weight")
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@classmethod
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def validate_control_weight(cls, v):
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validate_weights(v)
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return v
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@model_validator(mode="after")
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def validate_begin_end_step_percent(self) -> "ControlNetInvocation":
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validate_begin_end_step(self.begin_step_percent, self.end_step_percent)
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return self
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def invoke(self, context: InvocationContext) -> ControlOutput:
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return ControlOutput(
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control=ControlField(
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image=self.image,
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control_model=self.control_model,
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control_weight=self.control_weight,
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begin_step_percent=self.begin_step_percent,
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end_step_percent=self.end_step_percent,
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control_mode=self.control_mode,
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resize_mode=self.resize_mode,
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),
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)
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# This invocation exists for other invocations to subclass it - do not register with @invocation!
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class ImageProcessorInvocation(BaseInvocation, WithMetadata, WithBoard):
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"""Base class for invocations that preprocess images for ControlNet"""
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image: ImageField = InputField(description="The image to process")
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def run_processor(self, image: Image.Image) -> Image.Image:
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# superclass just passes through image without processing
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return image
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def load_image(self, context: InvocationContext) -> Image.Image:
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# allows override for any special formatting specific to the preprocessor
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return context.images.get_pil(self.image.image_name, "RGB")
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def invoke(self, context: InvocationContext) -> ImageOutput:
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self._context = context
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raw_image = self.load_image(context)
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# image type should be PIL.PngImagePlugin.PngImageFile ?
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processed_image = self.run_processor(raw_image)
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# currently can't see processed image in node UI without a showImage node,
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# so for now setting image_type to RESULT instead of INTERMEDIATE so will get saved in gallery
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image_dto = context.images.save(image=processed_image)
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"""Builds an ImageOutput and its ImageField"""
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processed_image_field = ImageField(image_name=image_dto.image_name)
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return ImageOutput(
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image=processed_image_field,
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# width=processed_image.width,
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width=image_dto.width,
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# height=processed_image.height,
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height=image_dto.height,
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# mode=processed_image.mode,
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)
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@invocation(
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"canny_image_processor",
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title="Canny Processor",
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tags=["controlnet", "canny"],
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category="controlnet",
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version="1.3.3",
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)
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class CannyImageProcessorInvocation(ImageProcessorInvocation):
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"""Canny edge detection for ControlNet"""
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detect_resolution: int = InputField(default=512, ge=1, description=FieldDescriptions.detect_res)
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image_resolution: int = InputField(default=512, ge=1, description=FieldDescriptions.image_res)
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low_threshold: int = InputField(
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default=100, ge=0, le=255, description="The low threshold of the Canny pixel gradient (0-255)"
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)
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high_threshold: int = InputField(
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default=200, ge=0, le=255, description="The high threshold of the Canny pixel gradient (0-255)"
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)
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def load_image(self, context: InvocationContext) -> Image.Image:
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# Keep alpha channel for Canny processing to detect edges of transparent areas
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return context.images.get_pil(self.image.image_name, "RGBA")
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def run_processor(self, image: Image.Image) -> Image.Image:
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processed_image = get_canny_edges(
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image,
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self.low_threshold,
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self.high_threshold,
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detect_resolution=self.detect_resolution,
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image_resolution=self.image_resolution,
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)
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return processed_image
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@invocation(
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"hed_image_processor",
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title="HED (softedge) Processor",
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tags=["controlnet", "hed", "softedge"],
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category="controlnet",
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version="1.2.3",
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)
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class HedImageProcessorInvocation(ImageProcessorInvocation):
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"""Applies HED edge detection to image"""
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detect_resolution: int = InputField(default=512, ge=1, description=FieldDescriptions.detect_res)
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image_resolution: int = InputField(default=512, ge=1, description=FieldDescriptions.image_res)
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# safe not supported in controlnet_aux v0.0.3
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# safe: bool = InputField(default=False, description=FieldDescriptions.safe_mode)
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scribble: bool = InputField(default=False, description=FieldDescriptions.scribble_mode)
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def run_processor(self, image: Image.Image) -> Image.Image:
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hed_processor = HEDProcessor()
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processed_image = hed_processor.run(
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image,
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detect_resolution=self.detect_resolution,
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image_resolution=self.image_resolution,
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# safe not supported in controlnet_aux v0.0.3
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# safe=self.safe,
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scribble=self.scribble,
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)
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return processed_image
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@invocation(
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"lineart_image_processor",
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title="Lineart Processor",
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tags=["controlnet", "lineart"],
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category="controlnet",
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version="1.2.3",
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)
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class LineartImageProcessorInvocation(ImageProcessorInvocation):
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"""Applies line art processing to image"""
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detect_resolution: int = InputField(default=512, ge=1, description=FieldDescriptions.detect_res)
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image_resolution: int = InputField(default=512, ge=1, description=FieldDescriptions.image_res)
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coarse: bool = InputField(default=False, description="Whether to use coarse mode")
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def run_processor(self, image: Image.Image) -> Image.Image:
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lineart_processor = LineartProcessor()
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processed_image = lineart_processor.run(
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image, detect_resolution=self.detect_resolution, image_resolution=self.image_resolution, coarse=self.coarse
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)
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return processed_image
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@invocation(
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"lineart_anime_image_processor",
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title="Lineart Anime Processor",
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tags=["controlnet", "lineart", "anime"],
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category="controlnet",
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version="1.2.3",
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)
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class LineartAnimeImageProcessorInvocation(ImageProcessorInvocation):
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"""Applies line art anime processing to image"""
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detect_resolution: int = InputField(default=512, ge=1, description=FieldDescriptions.detect_res)
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image_resolution: int = InputField(default=512, ge=1, description=FieldDescriptions.image_res)
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def run_processor(self, image: Image.Image) -> Image.Image:
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processor = LineartAnimeProcessor()
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processed_image = processor.run(
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image,
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detect_resolution=self.detect_resolution,
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image_resolution=self.image_resolution,
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)
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return processed_image
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@invocation(
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"midas_depth_image_processor",
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title="Midas Depth Processor",
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tags=["controlnet", "midas"],
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category="controlnet",
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version="1.2.4",
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)
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class MidasDepthImageProcessorInvocation(ImageProcessorInvocation):
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"""Applies Midas depth processing to image"""
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a_mult: float = InputField(default=2.0, ge=0, description="Midas parameter `a_mult` (a = a_mult * PI)")
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bg_th: float = InputField(default=0.1, ge=0, description="Midas parameter `bg_th`")
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detect_resolution: int = InputField(default=512, ge=1, description=FieldDescriptions.detect_res)
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image_resolution: int = InputField(default=512, ge=1, description=FieldDescriptions.image_res)
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# depth_and_normal not supported in controlnet_aux v0.0.3
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# depth_and_normal: bool = InputField(default=False, description="whether to use depth and normal mode")
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def run_processor(self, image: Image.Image) -> Image.Image:
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# TODO: replace from_pretrained() calls with context.models.download_and_cache() (or similar)
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midas_processor = MidasDetector.from_pretrained("lllyasviel/Annotators")
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processed_image = midas_processor(
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image,
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a=np.pi * self.a_mult,
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bg_th=self.bg_th,
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image_resolution=self.image_resolution,
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detect_resolution=self.detect_resolution,
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# dept_and_normal not supported in controlnet_aux v0.0.3
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# depth_and_normal=self.depth_and_normal,
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)
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return processed_image
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@invocation(
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"normalbae_image_processor",
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title="Normal BAE Processor",
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tags=["controlnet"],
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category="controlnet",
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version="1.2.3",
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)
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class NormalbaeImageProcessorInvocation(ImageProcessorInvocation):
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"""Applies NormalBae processing to image"""
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detect_resolution: int = InputField(default=512, ge=1, description=FieldDescriptions.detect_res)
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image_resolution: int = InputField(default=512, ge=1, description=FieldDescriptions.image_res)
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def run_processor(self, image: Image.Image) -> Image.Image:
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normalbae_processor = NormalBaeDetector.from_pretrained("lllyasviel/Annotators")
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processed_image = normalbae_processor(
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image, detect_resolution=self.detect_resolution, image_resolution=self.image_resolution
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)
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return processed_image
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@invocation(
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"mlsd_image_processor", title="MLSD Processor", tags=["controlnet", "mlsd"], category="controlnet", version="1.2.3"
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)
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class MlsdImageProcessorInvocation(ImageProcessorInvocation):
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"""Applies MLSD processing to image"""
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detect_resolution: int = InputField(default=512, ge=1, description=FieldDescriptions.detect_res)
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image_resolution: int = InputField(default=512, ge=1, description=FieldDescriptions.image_res)
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thr_v: float = InputField(default=0.1, ge=0, description="MLSD parameter `thr_v`")
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thr_d: float = InputField(default=0.1, ge=0, description="MLSD parameter `thr_d`")
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def run_processor(self, image: Image.Image) -> Image.Image:
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mlsd_processor = MLSDdetector.from_pretrained("lllyasviel/Annotators")
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processed_image = mlsd_processor(
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image,
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detect_resolution=self.detect_resolution,
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image_resolution=self.image_resolution,
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thr_v=self.thr_v,
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thr_d=self.thr_d,
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)
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return processed_image
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@invocation(
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"pidi_image_processor", title="PIDI Processor", tags=["controlnet", "pidi"], category="controlnet", version="1.2.3"
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)
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class PidiImageProcessorInvocation(ImageProcessorInvocation):
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"""Applies PIDI processing to image"""
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detect_resolution: int = InputField(default=512, ge=1, description=FieldDescriptions.detect_res)
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image_resolution: int = InputField(default=512, ge=1, description=FieldDescriptions.image_res)
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safe: bool = InputField(default=False, description=FieldDescriptions.safe_mode)
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scribble: bool = InputField(default=False, description=FieldDescriptions.scribble_mode)
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def run_processor(self, image: Image.Image) -> Image.Image:
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pidi_processor = PidiNetDetector.from_pretrained("lllyasviel/Annotators")
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processed_image = pidi_processor(
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image,
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detect_resolution=self.detect_resolution,
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image_resolution=self.image_resolution,
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safe=self.safe,
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scribble=self.scribble,
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)
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return processed_image
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@invocation(
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"content_shuffle_image_processor",
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title="Content Shuffle Processor",
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tags=["controlnet", "contentshuffle"],
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category="controlnet",
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version="1.2.3",
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)
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class ContentShuffleImageProcessorInvocation(ImageProcessorInvocation):
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"""Applies content shuffle processing to image"""
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detect_resolution: int = InputField(default=512, ge=1, description=FieldDescriptions.detect_res)
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image_resolution: int = InputField(default=512, ge=1, description=FieldDescriptions.image_res)
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h: int = InputField(default=512, ge=0, description="Content shuffle `h` parameter")
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w: int = InputField(default=512, ge=0, description="Content shuffle `w` parameter")
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f: int = InputField(default=256, ge=0, description="Content shuffle `f` parameter")
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def run_processor(self, image: Image.Image) -> Image.Image:
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content_shuffle_processor = ContentShuffleDetector()
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processed_image = content_shuffle_processor(
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image,
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detect_resolution=self.detect_resolution,
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image_resolution=self.image_resolution,
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h=self.h,
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w=self.w,
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f=self.f,
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)
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return processed_image
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# should work with controlnet_aux >= 0.0.4 and timm <= 0.6.13
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@invocation(
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"zoe_depth_image_processor",
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title="Zoe (Depth) Processor",
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tags=["controlnet", "zoe", "depth"],
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category="controlnet",
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version="1.2.3",
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)
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class ZoeDepthImageProcessorInvocation(ImageProcessorInvocation):
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"""Applies Zoe depth processing to image"""
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def run_processor(self, image: Image.Image) -> Image.Image:
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zoe_depth_processor = ZoeDetector.from_pretrained("lllyasviel/Annotators")
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processed_image = zoe_depth_processor(image)
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return processed_image
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@invocation(
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"mediapipe_face_processor",
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title="Mediapipe Face Processor",
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tags=["controlnet", "mediapipe", "face"],
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category="controlnet",
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version="1.2.4",
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)
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class MediapipeFaceProcessorInvocation(ImageProcessorInvocation):
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"""Applies mediapipe face processing to image"""
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max_faces: int = InputField(default=1, ge=1, description="Maximum number of faces to detect")
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min_confidence: float = InputField(default=0.5, ge=0, le=1, description="Minimum confidence for face detection")
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detect_resolution: int = InputField(default=512, ge=1, description=FieldDescriptions.detect_res)
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image_resolution: int = InputField(default=512, ge=1, description=FieldDescriptions.image_res)
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def run_processor(self, image: Image.Image) -> Image.Image:
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mediapipe_face_processor = MediapipeFaceDetector()
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processed_image = mediapipe_face_processor(
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image,
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max_faces=self.max_faces,
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min_confidence=self.min_confidence,
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image_resolution=self.image_resolution,
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detect_resolution=self.detect_resolution,
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)
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return processed_image
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@invocation(
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"leres_image_processor",
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title="Leres (Depth) Processor",
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tags=["controlnet", "leres", "depth"],
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category="controlnet",
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version="1.2.3",
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)
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class LeresImageProcessorInvocation(ImageProcessorInvocation):
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"""Applies leres processing to image"""
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|
|
thr_a: float = InputField(default=0, description="Leres parameter `thr_a`")
|
|
thr_b: float = InputField(default=0, description="Leres parameter `thr_b`")
|
|
boost: bool = InputField(default=False, description="Whether to use boost mode")
|
|
detect_resolution: int = InputField(default=512, ge=1, description=FieldDescriptions.detect_res)
|
|
image_resolution: int = InputField(default=512, ge=1, description=FieldDescriptions.image_res)
|
|
|
|
def run_processor(self, image: Image.Image) -> Image.Image:
|
|
leres_processor = LeresDetector.from_pretrained("lllyasviel/Annotators")
|
|
processed_image = leres_processor(
|
|
image,
|
|
thr_a=self.thr_a,
|
|
thr_b=self.thr_b,
|
|
boost=self.boost,
|
|
detect_resolution=self.detect_resolution,
|
|
image_resolution=self.image_resolution,
|
|
)
|
|
return processed_image
|
|
|
|
|
|
@invocation(
|
|
"tile_image_processor",
|
|
title="Tile Resample Processor",
|
|
tags=["controlnet", "tile"],
|
|
category="controlnet",
|
|
version="1.2.3",
|
|
)
|
|
class TileResamplerProcessorInvocation(ImageProcessorInvocation):
|
|
"""Tile resampler processor"""
|
|
|
|
# res: int = InputField(default=512, ge=0, le=1024, description="The pixel resolution for each tile")
|
|
down_sampling_rate: float = InputField(default=1.0, ge=1.0, le=8.0, description="Down sampling rate")
|
|
|
|
# tile_resample copied from sd-webui-controlnet/scripts/processor.py
|
|
def tile_resample(
|
|
self,
|
|
np_img: np.ndarray,
|
|
res=512, # never used?
|
|
down_sampling_rate=1.0,
|
|
):
|
|
np_img = HWC3(np_img)
|
|
if down_sampling_rate < 1.1:
|
|
return np_img
|
|
H, W, C = np_img.shape
|
|
H = int(float(H) / float(down_sampling_rate))
|
|
W = int(float(W) / float(down_sampling_rate))
|
|
np_img = cv2.resize(np_img, (W, H), interpolation=cv2.INTER_AREA)
|
|
return np_img
|
|
|
|
def run_processor(self, image: Image.Image) -> Image.Image:
|
|
np_img = np.array(image, dtype=np.uint8)
|
|
processed_np_image = self.tile_resample(
|
|
np_img,
|
|
# res=self.tile_size,
|
|
down_sampling_rate=self.down_sampling_rate,
|
|
)
|
|
processed_image = Image.fromarray(processed_np_image)
|
|
return processed_image
|
|
|
|
|
|
@invocation(
|
|
"segment_anything_processor",
|
|
title="Segment Anything Processor",
|
|
tags=["controlnet", "segmentanything"],
|
|
category="controlnet",
|
|
version="1.2.4",
|
|
)
|
|
class SegmentAnythingProcessorInvocation(ImageProcessorInvocation):
|
|
"""Applies segment anything processing to image"""
|
|
|
|
detect_resolution: int = InputField(default=512, ge=1, description=FieldDescriptions.detect_res)
|
|
image_resolution: int = InputField(default=512, ge=1, description=FieldDescriptions.image_res)
|
|
|
|
def run_processor(self, image: Image.Image) -> Image.Image:
|
|
# segment_anything_processor = SamDetector.from_pretrained("ybelkada/segment-anything", subfolder="checkpoints")
|
|
segment_anything_processor = SamDetectorReproducibleColors.from_pretrained(
|
|
"ybelkada/segment-anything", subfolder="checkpoints"
|
|
)
|
|
np_img = np.array(image, dtype=np.uint8)
|
|
processed_image = segment_anything_processor(
|
|
np_img, image_resolution=self.image_resolution, detect_resolution=self.detect_resolution
|
|
)
|
|
return processed_image
|
|
|
|
|
|
class SamDetectorReproducibleColors(SamDetector):
|
|
# overriding SamDetector.show_anns() method to use reproducible colors for segmentation image
|
|
# base class show_anns() method randomizes colors,
|
|
# which seems to also lead to non-reproducible image generation
|
|
# so using ADE20k color palette instead
|
|
def show_anns(self, anns: List[Dict]):
|
|
if len(anns) == 0:
|
|
return
|
|
sorted_anns = sorted(anns, key=(lambda x: x["area"]), reverse=True)
|
|
h, w = anns[0]["segmentation"].shape
|
|
final_img = Image.fromarray(np.zeros((h, w, 3), dtype=np.uint8), mode="RGB")
|
|
palette = ade_palette()
|
|
for i, ann in enumerate(sorted_anns):
|
|
m = ann["segmentation"]
|
|
img = np.empty((m.shape[0], m.shape[1], 3), dtype=np.uint8)
|
|
# doing modulo just in case number of annotated regions exceeds number of colors in palette
|
|
ann_color = palette[i % len(palette)]
|
|
img[:, :] = ann_color
|
|
final_img.paste(Image.fromarray(img, mode="RGB"), (0, 0), Image.fromarray(np.uint8(m * 255)))
|
|
return np.array(final_img, dtype=np.uint8)
|
|
|
|
|
|
@invocation(
|
|
"color_map_image_processor",
|
|
title="Color Map Processor",
|
|
tags=["controlnet"],
|
|
category="controlnet",
|
|
version="1.2.3",
|
|
)
|
|
class ColorMapImageProcessorInvocation(ImageProcessorInvocation):
|
|
"""Generates a color map from the provided image"""
|
|
|
|
color_map_tile_size: int = InputField(default=64, ge=1, description=FieldDescriptions.tile_size)
|
|
|
|
def run_processor(self, image: Image.Image) -> Image.Image:
|
|
np_image = np.array(image, dtype=np.uint8)
|
|
height, width = np_image.shape[:2]
|
|
|
|
width_tile_size = min(self.color_map_tile_size, width)
|
|
height_tile_size = min(self.color_map_tile_size, height)
|
|
|
|
color_map = cv2.resize(
|
|
np_image,
|
|
(width // width_tile_size, height // height_tile_size),
|
|
interpolation=cv2.INTER_CUBIC,
|
|
)
|
|
color_map = cv2.resize(color_map, (width, height), interpolation=cv2.INTER_NEAREST)
|
|
color_map = Image.fromarray(color_map)
|
|
return color_map
|
|
|
|
|
|
DEPTH_ANYTHING_MODEL_SIZES = Literal["large", "base", "small", "small_v2"]
|
|
# DepthAnything V2 Small model is licensed under Apache 2.0 but not the base and large models.
|
|
DEPTH_ANYTHING_MODELS = {
|
|
"large": "LiheYoung/depth-anything-large-hf",
|
|
"base": "LiheYoung/depth-anything-base-hf",
|
|
"small": "LiheYoung/depth-anything-small-hf",
|
|
"small_v2": "depth-anything/Depth-Anything-V2-Small-hf",
|
|
}
|
|
|
|
|
|
@invocation(
|
|
"depth_anything_image_processor",
|
|
title="Depth Anything Processor",
|
|
tags=["controlnet", "depth", "depth anything"],
|
|
category="controlnet",
|
|
version="1.1.3",
|
|
)
|
|
class DepthAnythingImageProcessorInvocation(ImageProcessorInvocation):
|
|
"""Generates a depth map based on the Depth Anything algorithm"""
|
|
|
|
model_size: DEPTH_ANYTHING_MODEL_SIZES = InputField(
|
|
default="small", description="The size of the depth model to use"
|
|
)
|
|
resolution: int = InputField(default=512, ge=1, description=FieldDescriptions.image_res)
|
|
|
|
def run_processor(self, image: Image.Image) -> Image.Image:
|
|
def load_depth_anything(model_path: Path):
|
|
depth_anything_pipeline = pipeline(model=str(model_path), task="depth-estimation", local_files_only=True)
|
|
assert isinstance(depth_anything_pipeline, DepthEstimationPipeline)
|
|
return DepthAnythingPipeline(depth_anything_pipeline)
|
|
|
|
with self._context.models.load_remote_model(
|
|
source=DEPTH_ANYTHING_MODELS[self.model_size], loader=load_depth_anything
|
|
) as depth_anything_detector:
|
|
assert isinstance(depth_anything_detector, DepthAnythingPipeline)
|
|
depth_map = depth_anything_detector.generate_depth(image)
|
|
|
|
# Resizing to user target specified size
|
|
new_height = int(image.size[1] * (self.resolution / image.size[0]))
|
|
depth_map = depth_map.resize((self.resolution, new_height))
|
|
|
|
return depth_map
|
|
|
|
|
|
@invocation(
|
|
"dw_openpose_image_processor",
|
|
title="DW Openpose Image Processor",
|
|
tags=["controlnet", "dwpose", "openpose"],
|
|
category="controlnet",
|
|
version="1.1.1",
|
|
)
|
|
class DWOpenposeImageProcessorInvocation(ImageProcessorInvocation):
|
|
"""Generates an openpose pose from an image using DWPose"""
|
|
|
|
draw_body: bool = InputField(default=True)
|
|
draw_face: bool = InputField(default=False)
|
|
draw_hands: bool = InputField(default=False)
|
|
image_resolution: int = InputField(default=512, ge=1, description=FieldDescriptions.image_res)
|
|
|
|
def run_processor(self, image: Image.Image) -> Image.Image:
|
|
onnx_det = self._context.models.download_and_cache_model(DWPOSE_MODELS["yolox_l.onnx"])
|
|
onnx_pose = self._context.models.download_and_cache_model(DWPOSE_MODELS["dw-ll_ucoco_384.onnx"])
|
|
|
|
dw_openpose = DWOpenposeDetector(onnx_det=onnx_det, onnx_pose=onnx_pose)
|
|
processed_image = dw_openpose(
|
|
image,
|
|
draw_face=self.draw_face,
|
|
draw_hands=self.draw_hands,
|
|
draw_body=self.draw_body,
|
|
resolution=self.image_resolution,
|
|
)
|
|
return processed_image
|
|
|
|
|
|
@invocation(
|
|
"heuristic_resize",
|
|
title="Heuristic Resize",
|
|
tags=["image, controlnet"],
|
|
category="image",
|
|
version="1.0.1",
|
|
classification=Classification.Prototype,
|
|
)
|
|
class HeuristicResizeInvocation(BaseInvocation):
|
|
"""Resize an image using a heuristic method. Preserves edge maps."""
|
|
|
|
image: ImageField = InputField(description="The image to resize")
|
|
width: int = InputField(default=512, ge=1, description="The width to resize to (px)")
|
|
height: int = InputField(default=512, ge=1, description="The height to resize to (px)")
|
|
|
|
def invoke(self, context: InvocationContext) -> ImageOutput:
|
|
image = context.images.get_pil(self.image.image_name, "RGB")
|
|
np_img = pil_to_np(image)
|
|
np_resized = heuristic_resize(np_img, (self.width, self.height))
|
|
resized = np_to_pil(np_resized)
|
|
image_dto = context.images.save(image=resized)
|
|
return ImageOutput.build(image_dto)
|