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import argparse |
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import os |
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from omegaconf import OmegaConf |
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import numpy as np |
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import cv2 |
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import torch |
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import glob |
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import pickle |
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import sys |
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from tqdm import tqdm |
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import copy |
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import json |
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from musetalk.utils.utils import get_file_type,get_video_fps,datagen |
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from musetalk.utils.preprocessing import get_landmark_and_bbox,read_imgs,coord_placeholder |
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from musetalk.utils.blending import get_image,get_image_prepare_material,get_image_blending |
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from musetalk.utils.utils import load_all_model |
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import shutil |
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import threading |
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import queue |
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import time |
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audio_processor, vae, unet, pe = load_all_model() |
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device = torch.device("cuda" if torch.cuda.is_available() else "cpu") |
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timesteps = torch.tensor([0], device=device) |
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pe = pe.half() |
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vae.vae = vae.vae.half() |
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unet.model = unet.model.half() |
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def video2imgs(vid_path, save_path, ext = '.png',cut_frame = 10000000): |
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cap = cv2.VideoCapture(vid_path) |
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count = 0 |
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while True: |
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if count > cut_frame: |
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break |
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ret, frame = cap.read() |
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if ret: |
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cv2.imwrite(f"{save_path}/{count:08d}.png", frame) |
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count += 1 |
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else: |
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break |
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def osmakedirs(path_list): |
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for path in path_list: |
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os.makedirs(path) if not os.path.exists(path) else None |
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@torch.no_grad() |
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class Avatar: |
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def __init__(self, avatar_id, video_path, bbox_shift, batch_size, preparation): |
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self.avatar_id = avatar_id |
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self.video_path = video_path |
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self.bbox_shift = bbox_shift |
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self.avatar_path = f"./results/avatars/{avatar_id}" |
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self.full_imgs_path = f"{self.avatar_path}/full_imgs" |
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self.coords_path = f"{self.avatar_path}/coords.pkl" |
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self.latents_out_path= f"{self.avatar_path}/latents.pt" |
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self.video_out_path = f"{self.avatar_path}/vid_output/" |
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self.mask_out_path =f"{self.avatar_path}/mask" |
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self.mask_coords_path =f"{self.avatar_path}/mask_coords.pkl" |
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self.avatar_info_path = f"{self.avatar_path}/avator_info.json" |
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self.avatar_info = { |
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"avatar_id":avatar_id, |
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"video_path":video_path, |
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"bbox_shift":bbox_shift |
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} |
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self.preparation = preparation |
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self.batch_size = batch_size |
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self.idx = 0 |
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self.init() |
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def init(self): |
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if self.preparation: |
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if os.path.exists(self.avatar_path): |
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response = input(f"{self.avatar_id} exists, Do you want to re-create it ? (y/n)") |
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if response.lower() == "y": |
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shutil.rmtree(self.avatar_path) |
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print("*********************************") |
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print(f" creating avator: {self.avatar_id}") |
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print("*********************************") |
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osmakedirs([self.avatar_path,self.full_imgs_path,self.video_out_path,self.mask_out_path]) |
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self.prepare_material() |
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else: |
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self.input_latent_list_cycle = torch.load(self.latents_out_path) |
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with open(self.coords_path, 'rb') as f: |
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self.coord_list_cycle = pickle.load(f) |
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input_img_list = glob.glob(os.path.join(self.full_imgs_path, '*.[jpJP][pnPN]*[gG]')) |
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input_img_list = sorted(input_img_list, key=lambda x: int(os.path.splitext(os.path.basename(x))[0])) |
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self.frame_list_cycle = read_imgs(input_img_list) |
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with open(self.mask_coords_path, 'rb') as f: |
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self.mask_coords_list_cycle = pickle.load(f) |
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input_mask_list = glob.glob(os.path.join(self.mask_out_path, '*.[jpJP][pnPN]*[gG]')) |
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input_mask_list = sorted(input_mask_list, key=lambda x: int(os.path.splitext(os.path.basename(x))[0])) |
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self.mask_list_cycle = read_imgs(input_mask_list) |
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else: |
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print("*********************************") |
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print(f" creating avator: {self.avatar_id}") |
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print("*********************************") |
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osmakedirs([self.avatar_path,self.full_imgs_path,self.video_out_path,self.mask_out_path]) |
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self.prepare_material() |
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else: |
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if not os.path.exists(self.avatar_path): |
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print(f"{self.avatar_id} does not exist, you should set preparation to True") |
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sys.exit() |
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with open(self.avatar_info_path, "r") as f: |
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avatar_info = json.load(f) |
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if avatar_info['bbox_shift'] != self.avatar_info['bbox_shift']: |
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response = input(f" 【bbox_shift】 is changed, you need to re-create it ! (c/continue)") |
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if response.lower() == "c": |
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shutil.rmtree(self.avatar_path) |
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print("*********************************") |
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print(f" creating avator: {self.avatar_id}") |
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print("*********************************") |
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osmakedirs([self.avatar_path,self.full_imgs_path,self.video_out_path,self.mask_out_path]) |
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self.prepare_material() |
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else: |
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sys.exit() |
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else: |
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self.input_latent_list_cycle = torch.load(self.latents_out_path) |
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with open(self.coords_path, 'rb') as f: |
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self.coord_list_cycle = pickle.load(f) |
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input_img_list = glob.glob(os.path.join(self.full_imgs_path, '*.[jpJP][pnPN]*[gG]')) |
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input_img_list = sorted(input_img_list, key=lambda x: int(os.path.splitext(os.path.basename(x))[0])) |
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self.frame_list_cycle = read_imgs(input_img_list) |
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with open(self.mask_coords_path, 'rb') as f: |
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self.mask_coords_list_cycle = pickle.load(f) |
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input_mask_list = glob.glob(os.path.join(self.mask_out_path, '*.[jpJP][pnPN]*[gG]')) |
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input_mask_list = sorted(input_mask_list, key=lambda x: int(os.path.splitext(os.path.basename(x))[0])) |
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self.mask_list_cycle = read_imgs(input_mask_list) |
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def prepare_material(self): |
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print("preparing data materials ... ...") |
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with open(self.avatar_info_path, "w") as f: |
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json.dump(self.avatar_info, f) |
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if os.path.isfile(self.video_path): |
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video2imgs(self.video_path, self.full_imgs_path, ext = 'png') |
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else: |
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print(f"copy files in {self.video_path}") |
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files = os.listdir(self.video_path) |
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files.sort() |
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files = [file for file in files if file.split(".")[-1]=="png"] |
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for filename in files: |
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shutil.copyfile(f"{self.video_path}/{filename}", f"{self.full_imgs_path}/{filename}") |
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input_img_list = sorted(glob.glob(os.path.join(self.full_imgs_path, '*.[jpJP][pnPN]*[gG]'))) |
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print("extracting landmarks...") |
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coord_list, frame_list = get_landmark_and_bbox(input_img_list, self.bbox_shift) |
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input_latent_list = [] |
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idx = -1 |
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coord_placeholder = (0.0,0.0,0.0,0.0) |
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for bbox, frame in zip(coord_list, frame_list): |
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idx = idx + 1 |
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if bbox == coord_placeholder: |
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continue |
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x1, y1, x2, y2 = bbox |
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crop_frame = frame[y1:y2, x1:x2] |
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resized_crop_frame = cv2.resize(crop_frame,(256,256),interpolation = cv2.INTER_LANCZOS4) |
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latents = vae.get_latents_for_unet(resized_crop_frame) |
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input_latent_list.append(latents) |
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self.frame_list_cycle = frame_list + frame_list[::-1] |
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self.coord_list_cycle = coord_list + coord_list[::-1] |
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self.input_latent_list_cycle = input_latent_list + input_latent_list[::-1] |
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self.mask_coords_list_cycle = [] |
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self.mask_list_cycle = [] |
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for i,frame in enumerate(tqdm(self.frame_list_cycle)): |
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cv2.imwrite(f"{self.full_imgs_path}/{str(i).zfill(8)}.png",frame) |
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face_box = self.coord_list_cycle[i] |
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mask,crop_box = get_image_prepare_material(frame,face_box) |
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cv2.imwrite(f"{self.mask_out_path}/{str(i).zfill(8)}.png",mask) |
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self.mask_coords_list_cycle += [crop_box] |
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self.mask_list_cycle.append(mask) |
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with open(self.mask_coords_path, 'wb') as f: |
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pickle.dump(self.mask_coords_list_cycle, f) |
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with open(self.coords_path, 'wb') as f: |
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pickle.dump(self.coord_list_cycle, f) |
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torch.save(self.input_latent_list_cycle, os.path.join(self.latents_out_path)) |
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def process_frames(self, |
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res_frame_queue, |
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video_len, |
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skip_save_images): |
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print(video_len) |
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while True: |
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if self.idx>=video_len-1: |
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break |
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try: |
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start = time.time() |
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res_frame = res_frame_queue.get(block=True, timeout=1) |
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except queue.Empty: |
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continue |
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bbox = self.coord_list_cycle[self.idx%(len(self.coord_list_cycle))] |
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ori_frame = copy.deepcopy(self.frame_list_cycle[self.idx%(len(self.frame_list_cycle))]) |
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x1, y1, x2, y2 = bbox |
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try: |
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res_frame = cv2.resize(res_frame.astype(np.uint8),(x2-x1,y2-y1)) |
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except: |
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continue |
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mask = self.mask_list_cycle[self.idx%(len(self.mask_list_cycle))] |
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mask_crop_box = self.mask_coords_list_cycle[self.idx%(len(self.mask_coords_list_cycle))] |
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combine_frame = get_image_blending(ori_frame,res_frame,bbox,mask,mask_crop_box) |
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if skip_save_images is False: |
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cv2.imwrite(f"{self.avatar_path}/tmp/{str(self.idx).zfill(8)}.png",combine_frame) |
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self.idx = self.idx + 1 |
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def inference(self, |
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audio_path, |
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out_vid_name, |
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fps, |
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skip_save_images): |
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os.makedirs(self.avatar_path+'/tmp',exist_ok =True) |
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print("start inference") |
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start_time = time.time() |
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whisper_feature = audio_processor.audio2feat(audio_path) |
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whisper_chunks = audio_processor.feature2chunks(feature_array=whisper_feature,fps=fps) |
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print(f"processing audio:{audio_path} costs {(time.time() - start_time) * 1000}ms") |
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video_num = len(whisper_chunks) |
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res_frame_queue = queue.Queue() |
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self.idx = 0 |
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process_thread = threading.Thread(target=self.process_frames, args=(res_frame_queue, video_num, skip_save_images)) |
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process_thread.start() |
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gen = datagen(whisper_chunks, |
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self.input_latent_list_cycle, |
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self.batch_size) |
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start_time = time.time() |
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res_frame_list = [] |
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for i, (whisper_batch,latent_batch) in enumerate(tqdm(gen,total=int(np.ceil(float(video_num)/self.batch_size)))): |
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audio_feature_batch = torch.from_numpy(whisper_batch) |
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audio_feature_batch = audio_feature_batch.to(device=unet.device, |
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dtype=unet.model.dtype) |
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audio_feature_batch = pe(audio_feature_batch) |
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latent_batch = latent_batch.to(dtype=unet.model.dtype) |
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pred_latents = unet.model(latent_batch, |
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timesteps, |
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encoder_hidden_states=audio_feature_batch).sample |
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recon = vae.decode_latents(pred_latents) |
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for res_frame in recon: |
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res_frame_queue.put(res_frame) |
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process_thread.join() |
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if args.skip_save_images is True: |
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print('Total process time of {} frames without saving images = {}s'.format( |
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video_num, |
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time.time()-start_time)) |
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else: |
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print('Total process time of {} frames including saving images = {}s'.format( |
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video_num, |
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time.time()-start_time)) |
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if out_vid_name is not None and args.skip_save_images is False: |
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cmd_img2video = f"ffmpeg -y -v warning -r {fps} -f image2 -i {self.avatar_path}/tmp/%08d.png -vcodec libx264 -vf format=rgb24,scale=out_color_matrix=bt709,format=yuv420p -crf 18 {self.avatar_path}/temp.mp4" |
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print(cmd_img2video) |
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os.system(cmd_img2video) |
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output_vid = os.path.join(self.video_out_path, out_vid_name+".mp4") |
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cmd_combine_audio = f"ffmpeg -y -v warning -i {audio_path} -i {self.avatar_path}/temp.mp4 {output_vid}" |
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print(cmd_combine_audio) |
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os.system(cmd_combine_audio) |
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os.remove(f"{self.avatar_path}/temp.mp4") |
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shutil.rmtree(f"{self.avatar_path}/tmp") |
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print(f"result is save to {output_vid}") |
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print("\n") |
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if __name__ == "__main__": |
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''' |
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This script is used to simulate online chatting and applies necessary pre-processing such as face detection and face parsing in advance. During online chatting, only UNet and the VAE decoder are involved, which makes MuseTalk real-time. |
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''' |
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parser = argparse.ArgumentParser() |
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parser.add_argument("--inference_config", |
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type=str, |
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default="configs/inference/realtime.yaml", |
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) |
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parser.add_argument("--fps", |
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type=int, |
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default=25, |
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) |
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parser.add_argument("--batch_size", |
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type=int, |
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default=4, |
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) |
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parser.add_argument("--skip_save_images", |
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action="store_true", |
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help="Whether skip saving images for better generation speed calculation", |
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) |
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args = parser.parse_args() |
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inference_config = OmegaConf.load(args.inference_config) |
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print(inference_config) |
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for avatar_id in inference_config: |
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data_preparation = inference_config[avatar_id]["preparation"] |
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video_path = inference_config[avatar_id]["video_path"] |
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bbox_shift = inference_config[avatar_id]["bbox_shift"] |
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avatar = Avatar( |
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avatar_id = avatar_id, |
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video_path = video_path, |
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bbox_shift = bbox_shift, |
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batch_size = args.batch_size, |
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preparation= data_preparation) |
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audio_clips = inference_config[avatar_id]["audio_clips"] |
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for audio_num, audio_path in audio_clips.items(): |
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print("Inferring using:",audio_path) |
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avatar.inference(audio_path, |
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audio_num, |
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args.fps, |
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args.skip_save_images) |
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