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from PIL import Image, ImageFilter |
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import torch |
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import math |
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from nodes import common_ksampler, VAEEncode, VAEDecode, VAEDecodeTiled |
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from utils import pil_to_tensor, tensor_to_pil, get_crop_region, expand_crop, crop_cond |
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from modules import shared |
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if (not hasattr(Image, 'Resampling')): |
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Image.Resampling = Image |
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class StableDiffusionProcessing: |
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def __init__(self, init_img, model, positive, negative, vae, seed, steps, cfg, sampler_name, scheduler, denoise, upscale_by, uniform_tile_mode, tiled_decode): |
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self.init_images = [init_img] |
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self.image_mask = None |
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self.mask_blur = 0 |
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self.inpaint_full_res_padding = 0 |
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self.width = init_img.width |
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self.height = init_img.height |
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self.model = model |
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self.positive = positive |
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self.negative = negative |
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self.vae = vae |
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self.seed = seed |
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self.steps = steps |
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self.cfg = cfg |
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self.sampler_name = sampler_name |
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self.scheduler = scheduler |
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self.denoise = denoise |
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self.init_size = init_img.width, init_img.height |
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self.upscale_by = upscale_by |
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self.uniform_tile_mode = uniform_tile_mode |
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self.tiled_decode = tiled_decode |
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self.vae_decoder = VAEDecode() |
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self.vae_encoder = VAEEncode() |
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self.vae_decoder_tiled = VAEDecodeTiled() |
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self.extra_generation_params = {} |
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class Processed: |
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def __init__(self, p: StableDiffusionProcessing, images: list, seed: int, info: str): |
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self.images = images |
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self.seed = seed |
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self.info = info |
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def infotext(self, p: StableDiffusionProcessing, index): |
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return None |
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def fix_seed(p: StableDiffusionProcessing): |
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pass |
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def process_images(p: StableDiffusionProcessing) -> Processed: |
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image_mask = p.image_mask.convert('L') |
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init_image = p.init_images[0] |
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crop_region = get_crop_region(image_mask, p.inpaint_full_res_padding) |
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if p.uniform_tile_mode: |
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x1, y1, x2, y2 = crop_region |
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crop_width = x2 - x1 |
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crop_height = y2 - y1 |
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crop_ratio = crop_width / crop_height |
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p_ratio = p.width / p.height |
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if crop_ratio > p_ratio: |
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target_width = crop_width |
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target_height = round(crop_width / p_ratio) |
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else: |
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target_width = round(crop_height * p_ratio) |
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target_height = crop_height |
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crop_region, _ = expand_crop(crop_region, image_mask.width, image_mask.height, target_width, target_height) |
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tile_size = p.width, p.height |
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else: |
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x1, y1, x2, y2 = crop_region |
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crop_width = x2 - x1 |
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crop_height = y2 - y1 |
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target_width = math.ceil(crop_width / 8) * 8 |
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target_height = math.ceil(crop_height / 8) * 8 |
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crop_region, tile_size = expand_crop(crop_region, image_mask.width, |
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image_mask.height, target_width, target_height) |
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if p.mask_blur > 0: |
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image_mask = image_mask.filter(ImageFilter.GaussianBlur(p.mask_blur)) |
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tiles = [img.crop(crop_region) for img in shared.batch] |
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initial_tile_size = tiles[0].size |
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for i, tile in enumerate(tiles): |
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if tile.size != tile_size: |
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tiles[i] = tile.resize(tile_size, Image.Resampling.LANCZOS) |
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positive_cropped = crop_cond(p.positive, crop_region, p.init_size, init_image.size, tile_size) |
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negative_cropped = crop_cond(p.negative, crop_region, p.init_size, init_image.size, tile_size) |
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batched_tiles = torch.cat([pil_to_tensor(tile) for tile in tiles], dim=0) |
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(latent,) = p.vae_encoder.encode(p.vae, batched_tiles) |
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(samples,) = common_ksampler(p.model, p.seed, p.steps, p.cfg, p.sampler_name, |
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p.scheduler, positive_cropped, negative_cropped, latent, denoise=p.denoise) |
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if not p.tiled_decode: |
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(decoded,) = p.vae_decoder.decode(p.vae, samples) |
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else: |
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print("[USDU] Using tiled decode") |
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(decoded,) = p.vae_decoder_tiled.decode(p.vae, samples, 512) |
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tiles_sampled = [tensor_to_pil(decoded, i) for i in range(len(decoded))] |
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for i, tile_sampled in enumerate(tiles_sampled): |
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init_image = shared.batch[i] |
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if tile_sampled.size != initial_tile_size: |
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tile_sampled = tile_sampled.resize(initial_tile_size, Image.Resampling.LANCZOS) |
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image_tile_only = Image.new('RGBA', init_image.size) |
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image_tile_only.paste(tile_sampled, crop_region[:2]) |
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temp = image_tile_only.copy() |
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temp.putalpha(image_mask) |
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image_tile_only.paste(temp, image_tile_only) |
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result = init_image.convert('RGBA') |
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result.alpha_composite(image_tile_only) |
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result = result.convert('RGB') |
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shared.batch[i] = result |
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processed = Processed(p, [shared.batch[0]], p.seed, None) |
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return processed |
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