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import os |
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import cv2 |
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from typing import overload, Generator, Dict |
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from argparse import Namespace |
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import numpy as np |
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import torch |
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import imageio |
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from PIL import Image |
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from omegaconf import OmegaConf |
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from accelerate.utils import set_seed |
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from model.cldm import ControlLDM |
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from model.gaussian_diffusion import Diffusion |
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from model.bsrnet import RRDBNet |
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from model.scunet import SCUNet |
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from model.swinir import SwinIR |
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from utils.common import instantiate_from_config, load_file_from_url, count_vram_usage |
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from utils.face_restoration_helper import FaceRestoreHelper |
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from utils.helpers import ( |
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Pipeline, |
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BSRNetPipeline, SwinIRPipeline, SCUNetPipeline, |
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batch_bicubic_resize, |
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bicubic_resize, |
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save_video |
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) |
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from utils.cond_fn import MSEGuidance, WeightedMSEGuidance |
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from GMFlow.gmflow.gmflow import GMFlow |
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from controller.controller import AttentionControl |
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MODELS = { |
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"bsrnet": "https://github.com/cszn/KAIR/releases/download/v1.0/BSRNet.pth", |
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"swinir_face": "https://huggingface.co/lxq007/DiffBIR/resolve/main/face_swinir_v1.ckpt", |
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"scunet_psnr": "https://github.com/cszn/KAIR/releases/download/v1.0/scunet_color_real_psnr.pth", |
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"swinir_general": "https://huggingface.co/lxq007/DiffBIR/resolve/main/general_swinir_v1.ckpt", |
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"sd_v21": "https://huggingface.co/stabilityai/stable-diffusion-2-1-base/resolve/main/v2-1_512-ema-pruned.ckpt", |
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"v1_face": "https://huggingface.co/lxq007/DiffBIR-v2/resolve/main/v1_face.pth", |
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"v1_general": "https://huggingface.co/lxq007/DiffBIR-v2/resolve/main/v1_general.pth", |
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"v2": "https://huggingface.co/lxq007/DiffBIR-v2/resolve/main/v2.pth" |
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} |
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def load_model_from_url(url: str) -> Dict[str, torch.Tensor]: |
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sd_path = load_file_from_url(url, model_dir="weights") |
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sd = torch.load(sd_path, map_location="cpu") |
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if "state_dict" in sd: |
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sd = sd["state_dict"] |
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if list(sd.keys())[0].startswith("module"): |
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sd = {k[len("module."):]: v for k, v in sd.items()} |
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return sd |
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class InferenceLoop: |
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def __init__(self, args: Namespace) -> "InferenceLoop": |
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self.args = args |
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self.loop_ctx = {} |
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self.pipeline: Pipeline = None |
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self.init_stage1_model() |
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self.init_stage2_model() |
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self.init_cond_fn() |
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self.init_pipeline() |
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@overload |
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def init_stage1_model(self) -> None: |
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... |
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@count_vram_usage |
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def init_stage2_model(self) -> None: |
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config = OmegaConf.load(self.args.config) |
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if self.args.warp_period is not None: |
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config.params.latent_warp_cfg.warp_period = self.args.warp_period |
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if self.args.merge_period is not None: |
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config.params.latent_warp_cfg.merge_period = self.args.merge_period |
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if self.args.ToMe_period is not None: |
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config.params.VidToMe_cfg.ToMe_period = self.args.ToMe_period |
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if self.args.merge_ratio is not None: |
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config.params.VidToMe_cfg.merge_ratio = self.args.merge_ratio |
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self.cldm: ControlLDM = instantiate_from_config(config) |
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sd = load_model_from_url(MODELS["sd_v21"]) |
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unused = self.cldm.load_pretrained_sd(sd) |
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print(f"strictly load pretrained sd_v2.1, unused weights: {unused}") |
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control_sd = load_model_from_url(MODELS["v2"]) |
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self.cldm.load_controlnet_from_ckpt(control_sd) |
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print(f"strictly load controlnet weight") |
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self.cldm.eval().to(self.args.device) |
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self.diffusion: Diffusion = instantiate_from_config(OmegaConf.load("configs/inference/diffusion.yaml")) |
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self.diffusion.to(self.args.device) |
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def init_cond_fn(self) -> None: |
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if not self.args.guidance: |
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self.cond_fn = None |
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return |
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if self.args.g_loss == "mse": |
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cond_fn_cls = MSEGuidance |
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elif self.args.g_loss == "w_mse": |
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cond_fn_cls = WeightedMSEGuidance |
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else: |
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raise ValueError(self.args.g_loss) |
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self.cond_fn = cond_fn_cls( |
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scale=self.args.g_scale, t_start=self.args.g_start, t_stop=self.args.g_stop, |
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space=self.args.g_space, repeat=self.args.g_repeat |
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) |
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@overload |
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def init_pipeline(self) -> None: |
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... |
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def setup(self) -> None: |
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pass |
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def lq_loader(self) -> Generator[np.ndarray, None, None]: |
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img_exts = [".png", ".jpg", ".jpeg"] |
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if os.path.isdir(self.args.input): |
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file_names = sorted([ |
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file_name for file_name in os.listdir(self.args.input) if os.path.splitext(file_name)[-1] in img_exts |
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]) |
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file_paths = [os.path.join(self.args.input, file_name) for file_name in file_names] |
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else: |
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assert os.path.splitext(self.args.input)[-1] in img_exts |
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file_paths = [self.args.input] |
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def _loader() -> Generator[np.ndarray, None, None]: |
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for file_path in file_paths: |
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lq = np.array(Image.open(file_path).convert("RGB")) |
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print(f"load lq: {file_path}") |
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self.loop_ctx["file_stem"] = os.path.splitext(os.path.basename(file_path))[0] |
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for i in range(self.args.n_samples): |
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self.loop_ctx["repeat_idx"] = i |
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yield lq |
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return _loader |
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def batch_lq_loader(self) -> Generator[np.ndarray, None, None]: |
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img_exts = [".png", ".jpg", ".jpeg"] |
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if os.path.isdir(self.args.input): |
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file_names = sorted([ |
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file_name for file_name in os.listdir(self.args.input) if os.path.splitext(file_name)[-1] in img_exts |
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], key=lambda x: int(x.split('.')[0])) |
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file_paths = [os.path.join(self.args.input, file_name) for file_name in file_names] |
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file_paths = file_paths[:self.args.n_frames] |
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else: |
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assert os.path.splitext(self.args.input)[-1] in img_exts |
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file_paths = [self.args.input] |
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def _loader() -> Generator[np.ndarray, None, None]: |
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for j in range(0, len(file_paths), self.args.batch_size): |
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lqs, self.loop_ctx["file_stem"] = [], [] |
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batch = self.args.batch_size if len(file_paths) - (j + self.args.batch_size) > 2 else len(file_paths) - j |
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if batch != self.args.batch_size: |
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self.args.batch_size = batch |
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if self.pipeline.cldm.controller is not None and self.pipeline.cldm.controller.distances is not None: |
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self.pipeline.cldm.controller.distances.clear() |
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for file_path in file_paths[j:min(len(file_paths), j+batch)]: |
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print(f"[INFO] load lq: {file_path}") |
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lq = np.array(Image.open(file_path).convert("RGB")) |
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lqs.append(lq) |
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self.loop_ctx["file_stem"].append(os.path.splitext(os.path.basename(file_path))[0]) |
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self.args.final_size = (int(lqs[0].shape[0] * self.args.upscale), int(lqs[0].shape[1] * self.args.upscale)) |
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for i in range(self.args.n_samples): |
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self.loop_ctx["repeat_idx"] = i |
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yield np.array(lqs) |
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if j + batch == len(file_paths): |
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break |
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return _loader |
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def after_load_lq(self, lq: np.ndarray) -> np.ndarray: |
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return lq |
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@torch.no_grad() |
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def run(self) -> None: |
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self.setup() |
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loader = self.batch_lq_loader() |
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''' flow model ''' |
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flow_model = GMFlow( |
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feature_channels=128, |
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num_scales=1, |
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upsample_factor=8, |
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num_head=1, |
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attention_type='swin', |
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ffn_dim_expansion=4, |
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num_transformer_layers=6, |
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).to(self.args.device) |
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checkpoint = torch.load('weights/gmflow_sintel-0c07dcb3.pth', |
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map_location=lambda storage, loc: storage) |
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weights = checkpoint['model'] if 'model' in checkpoint else checkpoint |
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flow_model.load_state_dict(weights, strict=False) |
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flow_model.eval() |
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''' flow model ended ''' |
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results = [] |
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if self.cldm.latent_control: |
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self.cldm.controller.set_total_step(self.args.steps) |
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for i, img in enumerate(loader()): |
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torch.cuda.empty_cache() |
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lq = img |
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lq = self.after_load_lq(lq) |
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if self.cldm.latent_control: |
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print(f"[INFO] set seed @ {self.args.seed}") |
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set_seed(self.args.seed) |
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samples, stage1s = self.pipeline.run( |
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lq, self.args.steps, 1.0, self.args.tiled, |
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self.args.tile_size, self.args.tile_stride, |
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self.args.pos_prompt, self.args.neg_prompt, self.args.cfg_scale, |
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self.args.better_start, |
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index=i, input=self.args.input, final_size=self.args.final_size, |
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flow_model=flow_model, |
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) |
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if self.cldm.controller is not None: |
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self.cldm.controller.set_pre_keyframe_lq(lq[self.args.batch_size // 2][None]) |
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results.append(samples) |
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results = np.concatenate(results, axis=0) |
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video_path = f'DiffIR2VR_fps_10.mp4' |
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results = [np.array(img).astype(np.uint8) for img in results] |
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writer = imageio.get_writer(video_path, fps=10, codec='libx264', |
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macro_block_size=1) |
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for img in results: |
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writer.append_data(img) |
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writer.close() |
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return video_path |
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def save(self, sample: np.ndarray) -> None: |
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file_stem, repeat_idx = self.loop_ctx["file_stem"], self.loop_ctx["repeat_idx"] |
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file_name = f"{file_stem}_{repeat_idx}.png" if self.args.n_samples > 1 else f"{file_stem}.png" |
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save_path = os.path.join(self.args.output, file_name) |
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Image.fromarray(sample).save(save_path) |
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print(f"save result to {save_path}") |
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def batch_save(self, samples: np.ndarray, dir: str=None) -> None: |
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file_stems, repeat_idx = self.loop_ctx["file_stem"], self.loop_ctx["repeat_idx"] |
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if dir is not None: |
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out_dir = os.path.join(self.args.output, dir) |
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else: |
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out_dir = os.path.join(self.args.output) |
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os.makedirs(out_dir, exist_ok=True) |
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for file_stem, sample in zip(file_stems, samples): |
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file_name = f"{file_stem}_{repeat_idx}.png" if self.args.n_samples > 1 else f"{file_stem}.png" |
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save_path = os.path.join(out_dir, file_name) |
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Image.fromarray(sample).save(save_path) |
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print(f"save result to {save_path}") |
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class BSRInferenceLoop(InferenceLoop): |
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@count_vram_usage |
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def init_stage1_model(self) -> None: |
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self.bsrnet: RRDBNet = instantiate_from_config(OmegaConf.load("configs/inference/bsrnet.yaml")) |
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sd = load_model_from_url(MODELS["bsrnet"]) |
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self.bsrnet.load_state_dict(sd, strict=True) |
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self.bsrnet.eval().to(self.args.device) |
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def init_pipeline(self) -> None: |
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self.pipeline = BSRNetPipeline(self.bsrnet, self.cldm, self.diffusion, self.cond_fn, self.args.device, self.args.upscale) |
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class BFRInferenceLoop(InferenceLoop): |
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@count_vram_usage |
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def init_stage1_model(self) -> None: |
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self.swinir_face: SwinIR = instantiate_from_config(OmegaConf.load("configs/inference/swinir.yaml")) |
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sd = load_model_from_url(MODELS["swinir_face"]) |
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self.swinir_face.load_state_dict(sd, strict=True) |
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self.swinir_face.eval().to(self.args.device) |
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def init_pipeline(self) -> None: |
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self.pipeline = SwinIRPipeline(self.swinir_face, self.cldm, self.diffusion, self.cond_fn, self.args.device) |
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def after_load_lq(self, lq: np.ndarray) -> np.ndarray: |
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return bicubic_resize(lq, self.args.upscale) |
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class BIDInferenceLoop(InferenceLoop): |
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@count_vram_usage |
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def init_stage1_model(self) -> None: |
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self.scunet_psnr: SCUNet = instantiate_from_config(OmegaConf.load("configs/inference/scunet.yaml")) |
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sd = load_model_from_url(MODELS["scunet_psnr"]) |
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self.scunet_psnr.load_state_dict(sd, strict=True) |
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self.scunet_psnr.eval().to(self.args.device) |
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def init_pipeline(self) -> None: |
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self.pipeline = SCUNetPipeline(self.scunet_psnr, self.cldm, self.diffusion, self.cond_fn, self.args.device) |
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def after_load_lq(self, lq: np.ndarray) -> np.ndarray: |
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return batch_bicubic_resize(lq, self.args.upscale) |
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class V1InferenceLoop(InferenceLoop): |
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@count_vram_usage |
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def init_stage1_model(self) -> None: |
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self.swinir: SwinIR = instantiate_from_config(OmegaConf.load("configs/inference/swinir.yaml")) |
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if self.args.task == "fr": |
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sd = load_model_from_url(MODELS["swinir_face"]) |
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elif self.args.task == "sr": |
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sd = load_model_from_url(MODELS["swinir_general"]) |
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else: |
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raise ValueError(f"DiffBIR v1 doesn't support task: {self.args.task}, please use v2 by passsing '--version v2'") |
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self.swinir.load_state_dict(sd, strict=True) |
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self.swinir.eval().to(self.args.device) |
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def init_pipeline(self) -> None: |
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self.pipeline = SwinIRPipeline(self.swinir, self.cldm, self.diffusion, self.cond_fn, self.args.device) |
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def after_load_lq(self, lq: np.ndarray) -> np.ndarray: |
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return bicubic_resize(lq, self.args.upscale) |
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class UnAlignedBFRInferenceLoop(InferenceLoop): |
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@count_vram_usage |
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def init_stage1_model(self) -> None: |
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self.bsrnet: RRDBNet = instantiate_from_config(OmegaConf.load("configs/inference/bsrnet.yaml")) |
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sd = load_model_from_url(MODELS["bsrnet"]) |
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self.bsrnet.load_state_dict(sd, strict=True) |
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self.bsrnet.eval().to(self.args.device) |
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self.swinir_face: SwinIR = instantiate_from_config(OmegaConf.load("configs/inference/swinir.yaml")) |
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sd = load_model_from_url(MODELS["swinir_face"]) |
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self.swinir_face.load_state_dict(sd, strict=True) |
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self.swinir_face.eval().to(self.args.device) |
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def init_pipeline(self) -> None: |
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self.pipes = { |
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"bg": BSRNetPipeline(self.bsrnet, self.cldm, self.diffusion, self.cond_fn, self.args.device, self.args.upscale), |
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"face": SwinIRPipeline(self.swinir_face, self.cldm, self.diffusion, self.cond_fn, self.args.device) |
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} |
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self.pipeline = self.pipes["face"] |
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def setup(self) -> None: |
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super().setup() |
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self.cropped_face_dir = os.path.join(self.args.output, "cropped_faces") |
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os.makedirs(self.cropped_face_dir, exist_ok=True) |
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self.restored_face_dir = os.path.join(self.args.output, "restored_faces") |
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os.makedirs(self.restored_face_dir, exist_ok=True) |
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self.restored_bg_dir = os.path.join(self.args.output, "restored_backgrounds") |
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os.makedirs(self.restored_bg_dir, exist_ok=True) |
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def lq_loader(self) -> Generator[np.ndarray, None, None]: |
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base_loader = super().lq_loader() |
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self.face_helper = FaceRestoreHelper( |
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device=self.args.device, |
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upscale_factor=1, |
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face_size=512, |
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use_parse=True, |
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det_model="retinaface_resnet50" |
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) |
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def _loader() -> Generator[np.ndarray, None, None]: |
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for lq in base_loader(): |
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self.face_helper.clean_all() |
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upscaled_bg = bicubic_resize(lq, self.args.upscale) |
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self.face_helper.read_image(upscaled_bg) |
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self.face_helper.get_face_landmarks_5(resize=640, eye_dist_threshold=5) |
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self.face_helper.align_warp_face() |
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print(f"detect {len(self.face_helper.cropped_faces)} faces") |
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|
|
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for i, lq_face in enumerate(self.face_helper.cropped_faces): |
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self.loop_ctx["is_face"] = True |
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self.loop_ctx["face_idx"] = i |
|
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self.loop_ctx["cropped_face"] = lq_face |
|
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yield lq_face |
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|
|
|
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self.loop_ctx["is_face"] = False |
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|
yield lq |
|
|
|
|
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return _loader |
|
|
|
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def after_load_lq(self, lq: np.ndarray) -> np.ndarray: |
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if self.loop_ctx["is_face"]: |
|
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self.pipeline = self.pipes["face"] |
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else: |
|
|
self.pipeline = self.pipes["bg"] |
|
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return lq |
|
|
|
|
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def save(self, sample: np.ndarray) -> None: |
|
|
file_stem, repeat_idx = self.loop_ctx["file_stem"], self.loop_ctx["repeat_idx"] |
|
|
if self.loop_ctx["is_face"]: |
|
|
face_idx = self.loop_ctx["face_idx"] |
|
|
file_name = f"{file_stem}_{repeat_idx}_face_{face_idx}.png" |
|
|
Image.fromarray(sample).save(os.path.join(self.restored_face_dir, file_name)) |
|
|
|
|
|
cropped_face = self.loop_ctx["cropped_face"] |
|
|
Image.fromarray(cropped_face).save(os.path.join(self.cropped_face_dir, file_name)) |
|
|
|
|
|
self.face_helper.add_restored_face(sample) |
|
|
else: |
|
|
self.face_helper.get_inverse_affine() |
|
|
|
|
|
restored_img = self.face_helper.paste_faces_to_input_image( |
|
|
upsample_img=sample |
|
|
) |
|
|
file_name = f"{file_stem}_{repeat_idx}.png" |
|
|
Image.fromarray(sample).save(os.path.join(self.restored_bg_dir, file_name)) |
|
|
Image.fromarray(restored_img).save(os.path.join(self.output_dir, file_name)) |
|
|
|