from logging import getLogger from typing import Callable, Optional, Tuple import numpy as np import torch from diffusers import OnnxStableDiffusionInpaintPipeline from PIL import Image from ..device_pool import JobContext, ProgressCallback from ..diffusion.load import get_latents_from_seed, load_pipeline from ..image import expand_image, mask_filter_none, noise_source_histogram from ..output import save_image from ..params import Border, ImageParams, Size, SizeChart, StageParams from ..utils import ServerContext, is_debug from .utils import process_tile_order logger = getLogger(__name__) def blend_inpaint( job: JobContext, server: ServerContext, stage: StageParams, params: ImageParams, source_image: Image.Image, *, expand: Border, mask_image: Optional[Image.Image] = None, fill_color: str = "white", mask_filter: Callable = mask_filter_none, noise_source: Callable = noise_source_histogram, callback: ProgressCallback, **kwargs, ) -> Image.Image: logger.info("upscaling image by expanding borders", expand) if mask_image is None: # if no mask was provided, keep the full source image mask_image = Image.new("RGB", source_image.size, "black") source_image, mask_image, noise_image, _full_dims = expand_image( source_image, mask_image, expand, fill=fill_color, noise_source=noise_source, mask_filter=mask_filter, ) if is_debug(): save_image(server, "last-source.png", source_image) save_image(server, "last-mask.png", mask_image) save_image(server, "last-noise.png", noise_image) def outpaint(image: Image.Image, dims: Tuple[int, int, int]): left, top, tile = dims size = Size(*image.size) mask = mask_image.crop((left, top, left + tile, top + tile)) if is_debug(): save_image(server, "tile-source.png", image) save_image(server, "tile-mask.png", mask) latents = get_latents_from_seed(params.seed, size) pipe = load_pipeline( OnnxStableDiffusionInpaintPipeline, params.model, params.scheduler, job.get_device(), params.lpw, ) if params.lpw: logger.debug("using LPW pipeline for inpaint") rng = torch.manual_seed(params.seed) result = pipe.inpaint( params.prompt, generator=rng, guidance_scale=params.cfg, height=size.height, image=image, latents=latents, mask_image=mask, negative_prompt=params.negative_prompt, num_inference_steps=params.steps, width=size.width, callback=callback, ) else: rng = np.random.RandomState(params.seed) result = pipe( params.prompt, generator=rng, guidance_scale=params.cfg, height=size.height, image=image, latents=latents, mask_image=mask, negative_prompt=params.negative_prompt, num_inference_steps=params.steps, width=size.width, callback=callback, ) return result.images[0] output = process_tile_order( stage.tile_order, source_image, SizeChart.auto, 1, [outpaint] ) logger.info("final output image size", output.size) return output