Files
LC_NeoRefacer/refacer.py

385 lines
16 KiB
Python
Raw Normal View History

2023-06-03 08:04:06 +02:00
import cv2
import onnxruntime as rt
2023-06-03 08:04:06 +02:00
import sys
sys.path.insert(1, './recognition')
from scrfd import SCRFD
from arcface_onnx import ArcFaceONNX
import os.path as osp
2023-06-03 08:04:06 +02:00
import os
2025-04-10 22:08:59 +01:00
import requests
from tqdm import tqdm
2023-06-03 08:04:06 +02:00
import ffmpeg
import random
2023-06-05 23:18:25 +02:00
import multiprocessing as mp
from concurrent.futures import ThreadPoolExecutor
from insightface.model_zoo.inswapper import INSwapper
import psutil
from enum import Enum
from insightface.app.common import Face
from insightface.utils.storage import ensure_available
import re
import subprocess
2025-04-10 22:08:59 +01:00
from PIL import Image
import numpy as np
import time
from codeformer_wrapper import enhance_image
import tempfile
gc = __import__('gc')
# Preload NVIDIA DLLs if Windows
if sys.platform in ("win32", "win64"):
if hasattr(os, "add_dll_directory"):
2025-04-16 21:14:48 +01:00
try:
os.add_dll_directory(r"C:\Program Files\NVIDIA GPU Computing Toolkit\CUDA\v12.6\bin")
os.add_dll_directory(r"C:\Program Files\NVIDIA\CUDNN\v9.4\bin\12.6")
except Exception as e:
print(f"[INFO] Failed to add CUDA or CUDNN DLL directory: {e}")
print("[INFO] This error can be ignored if running in CPU mode. Otherwise, make sure the paths are correct.")
2025-04-10 22:08:59 +01:00
if hasattr(rt, "preload_dlls"):
rt.preload_dlls()
class RefacerMode(Enum):
2025-04-10 22:08:59 +01:00
CPU, CUDA, COREML, TENSORRT = range(1, 5)
2023-06-03 08:04:06 +02:00
class Refacer:
2025-04-10 22:08:59 +01:00
def __init__(self, force_cpu=False, colab_performance=False):
self.disable_similarity = False
self.multiple_faces_mode = False
self.first_face = False
self.force_cpu = force_cpu
self.colab_performance = colab_performance
2025-04-10 22:08:59 +01:00
self.use_num_cpus = mp.cpu_count()
self.__check_encoders()
self.__check_providers()
self.total_mem = psutil.virtual_memory().total
self.__init_apps()
2023-06-03 08:04:06 +02:00
2025-04-10 22:08:59 +01:00
def __download_with_progress(self, url, output_path):
response = requests.get(url, stream=True)
total_size = int(response.headers.get('content-length', 0))
block_size = 1024
t = tqdm(total=total_size, unit='iB', unit_scale=True, desc=f"Downloading {os.path.basename(output_path)}")
with open(output_path, 'wb') as f:
for data in response.iter_content(block_size):
t.update(len(data))
f.write(data)
t.close()
if total_size != 0 and t.n != total_size:
raise Exception("ERROR, something went wrong downloading the model!")
def __check_providers(self):
2025-04-10 22:08:59 +01:00
if self.force_cpu:
self.providers = ['CPUExecutionProvider']
else:
2025-04-10 22:08:59 +01:00
self.providers = ['CUDAExecutionProvider', 'CPUExecutionProvider']
rt.set_default_logger_severity(4)
self.sess_options = rt.SessionOptions()
self.sess_options.execution_mode = rt.ExecutionMode.ORT_SEQUENTIAL
self.sess_options.graph_optimization_level = rt.GraphOptimizationLevel.ORT_ENABLE_ALL
2023-06-03 08:04:06 +02:00
2025-04-10 22:08:59 +01:00
if 'CPUExecutionProvider' in self.providers:
self.mode = RefacerMode.CPU
2025-04-10 22:08:59 +01:00
self.use_num_cpus = mp.cpu_count() - 1
self.sess_options.intra_op_num_threads = int(self.use_num_cpus / 3)
elif self.colab_performance:
self.mode = RefacerMode.TENSORRT
2025-04-10 22:08:59 +01:00
self.use_num_cpus = mp.cpu_count() - 1
self.sess_options.intra_op_num_threads = int(self.use_num_cpus / 3)
elif 'CoreMLExecutionProvider' in self.providers:
self.mode = RefacerMode.COREML
2025-04-10 22:08:59 +01:00
self.use_num_cpus = mp.cpu_count() - 1
self.sess_options.intra_op_num_threads = int(self.use_num_cpus / 3)
else:
self.mode = RefacerMode.CUDA
2023-06-19 10:50:58 -04:00
self.use_num_cpus = 2
self.sess_options.intra_op_num_threads = 1
2025-04-10 22:08:59 +01:00
print(f"Using providers: {self.providers}")
print(f"Mode: {self.mode}")
def __init_apps(self):
assets_dir = ensure_available('models', 'buffalo_l', root='~/.insightface')
2023-06-03 08:04:06 +02:00
model_path = os.path.join(assets_dir, 'det_10g.onnx')
sess_face = rt.InferenceSession(model_path, self.sess_options, providers=self.providers)
2025-04-10 22:08:59 +01:00
print(f"Face Detector providers: {sess_face.get_providers()}")
self.face_detector = SCRFD(model_path, sess_face)
self.face_detector.prepare(0, input_size=(640, 640))
2023-06-03 08:04:06 +02:00
2025-04-10 22:08:59 +01:00
model_path = os.path.join(assets_dir, 'w600k_r50.onnx')
sess_rec = rt.InferenceSession(model_path, self.sess_options, providers=self.providers)
2025-04-10 22:08:59 +01:00
print(f"Face Recognizer providers: {sess_rec.get_providers()}")
self.rec_app = ArcFaceONNX(model_path, sess_rec)
2023-06-03 08:04:06 +02:00
self.rec_app.prepare(0)
2025-04-10 22:08:59 +01:00
model_dir = os.path.join('weights', 'inswapper')
os.makedirs(model_dir, exist_ok=True)
model_path = os.path.join(model_dir, 'inswapper_128.onnx')
if not os.path.exists(model_path):
print(f"Model {model_path} not found. Downloading from HuggingFace...")
url = "https://huggingface.co/ezioruan/inswapper_128.onnx/resolve/main/inswapper_128.onnx"
try:
self.__download_with_progress(url, model_path)
print(f"Downloaded {model_path}")
except Exception as e:
raise RuntimeError(f"Failed to download {model_path}. Error: {e}")
sess_swap = rt.InferenceSession(model_path, self.sess_options, providers=self.providers)
2025-04-10 22:08:59 +01:00
print(f"Face Swapper providers: {sess_swap.get_providers()}")
self.face_swapper = INSwapper(model_path, sess_swap)
def prepare_faces(self, faces, disable_similarity=False, multiple_faces_mode=False):
self.replacement_faces = []
self.disable_similarity = disable_similarity
self.multiple_faces_mode = multiple_faces_mode
2023-06-03 08:04:06 +02:00
for face in faces:
2025-04-10 22:08:59 +01:00
if "destination" not in face or face["destination"] is None:
print("Skipping face config: No destination face provided.")
continue
2023-06-03 08:04:06 +02:00
2025-04-10 22:08:59 +01:00
_faces = self.__get_faces(face['destination'], max_num=1)
if len(_faces) < 1:
raise Exception('No face detected on "Destination face" image')
2025-04-10 22:08:59 +01:00
if multiple_faces_mode:
self.replacement_faces.append((None, _faces[0], 0.0))
else:
if "origin" in face and face["origin"] is not None and not disable_similarity:
face_threshold = face['threshold']
bboxes1, kpss1 = self.face_detector.autodetect(face['origin'], max_num=1)
if len(kpss1) < 1:
raise Exception('No face detected on "Face to replace" image')
feat_original = self.rec_app.get(face['origin'], kpss1[0])
else:
face_threshold = 0
self.first_face = True
feat_original = None
2025-04-10 22:08:59 +01:00
self.replacement_faces.append((feat_original, _faces[0], face_threshold))
2025-04-10 22:08:59 +01:00
def __get_faces(self, frame, max_num=0):
bboxes, kpss = self.face_detector.detect(frame, max_num=max_num, metric='default')
if bboxes.shape[0] == 0:
return []
ret = []
for i in range(bboxes.shape[0]):
bbox = bboxes[i, 0:4]
det_score = bboxes[i, 4]
2025-04-10 22:08:59 +01:00
kps = kpss[i] if kpss is not None else None
face = Face(bbox=bbox, kps=kps, det_score=det_score)
face.embedding = self.rec_app.get(frame, kps)
ret.append(face)
return ret
2025-04-10 22:08:59 +01:00
def process_first_face(self, frame):
faces = self.__get_faces(frame, max_num=0)
if not faces:
return frame
if self.disable_similarity:
for face in faces:
frame = self.face_swapper.get(frame, face, self.replacement_faces[0][1], paste_back=True)
return frame
2025-04-10 22:08:59 +01:00
def process_faces(self, frame):
faces = self.__get_faces(frame, max_num=0)
if not faces:
return frame
faces = sorted(faces, key=lambda face: face.bbox[0]) # Sort left to right
if self.multiple_faces_mode:
for idx, face in enumerate(faces):
if idx >= len(self.replacement_faces):
break
2025-04-10 22:08:59 +01:00
frame = self.face_swapper.get(frame, face, self.replacement_faces[idx][1], paste_back=True)
elif self.disable_similarity:
for face in faces:
frame = self.face_swapper.get(frame, face, self.replacement_faces[0][1], paste_back=True)
else:
for rep_face in self.replacement_faces:
for i in range(len(faces) - 1, -1, -1):
sim = self.rec_app.compute_sim(rep_face[0], faces[i].embedding)
if sim >= rep_face[2]:
frame = self.face_swapper.get(frame, faces[i], rep_face[1], paste_back=True)
del faces[i]
break
2023-06-05 23:18:25 +02:00
return frame
2023-06-03 08:04:06 +02:00
def reface_group(self, faces, frames, output):
2025-04-10 22:08:59 +01:00
with ThreadPoolExecutor(max_workers=self.use_num_cpus) as executor:
if self.first_face:
2025-04-10 22:08:59 +01:00
results = list(tqdm(executor.map(self.process_first_face, frames), total=len(frames), desc="Processing frames"))
else:
2025-04-10 22:08:59 +01:00
results = list(tqdm(executor.map(self.process_faces, frames), total=len(frames), desc="Processing frames"))
for result in results:
output.write(result)
2025-04-10 22:08:59 +01:00
def __check_video_has_audio(self, video_path):
self.video_has_audio = False
probe = ffmpeg.probe(video_path)
audio_stream = next((stream for stream in probe['streams'] if stream['codec_type'] == 'audio'), None)
if audio_stream is not None:
self.video_has_audio = True
def reface(self, video_path, faces, preview=False, disable_similarity=False, multiple_faces_mode=False):
original_name = osp.splitext(osp.basename(video_path))[0]
timestamp = str(int(time.time()))
filename = f"{original_name}_preview.mp4" if preview else f"{original_name}_{timestamp}.mp4"
self.__check_video_has_audio(video_path)
2025-04-10 22:08:59 +01:00
os.makedirs("output", exist_ok=True)
output_video_path = os.path.join('output', filename)
self.prepare_faces(faces, disable_similarity=disable_similarity, multiple_faces_mode=multiple_faces_mode)
self.first_face = False if multiple_faces_mode else (faces[0].get("origin") is None or disable_similarity)
2023-06-03 08:04:06 +02:00
2025-04-10 22:08:59 +01:00
cap = cv2.VideoCapture(video_path, cv2.CAP_FFMPEG)
total_frames = int(cap.get(cv2.CAP_PROP_FRAME_COUNT))
2023-06-03 08:04:06 +02:00
fps = cap.get(cv2.CAP_PROP_FPS)
frame_width = int(cap.get(cv2.CAP_PROP_FRAME_WIDTH))
frame_height = int(cap.get(cv2.CAP_PROP_FRAME_HEIGHT))
fourcc = cv2.VideoWriter_fourcc(*'mp4v')
output = cv2.VideoWriter(output_video_path, fourcc, fps, (frame_width, frame_height))
2025-04-10 22:08:59 +01:00
frames = []
frame_index = 0
skip_rate = 10 if preview else 1
with tqdm(total=total_frames, desc="Extracting frames") as pbar:
while cap.isOpened():
flag, frame = cap.read()
2025-04-10 22:08:59 +01:00
if not flag:
break
2025-04-10 22:08:59 +01:00
if frame_index % skip_rate == 0:
frames.append(frame)
if len(frames) > 300:
self.reface_group(faces, frames, output)
frames = []
gc.collect()
frame_index += 1
pbar.update()
2023-06-03 08:04:06 +02:00
2025-04-10 22:08:59 +01:00
cap.release()
if frames:
self.reface_group(faces, frames, output)
output.release()
2025-04-10 22:08:59 +01:00
converted_path = self.__convert_video(video_path, output_video_path, preview=preview)
if video_path.lower().endswith(".gif"):
gif_output_path = converted_path.replace(".mp4", ".gif")
self.__generate_gif(converted_path, gif_output_path)
return converted_path, gif_output_path
return converted_path, None
def __generate_gif(self, video_path, gif_output_path):
print(f"Generating GIF at {gif_output_path}")
(
ffmpeg
.input(video_path)
.output(gif_output_path, vf='fps=10,scale=512:-1:flags=lanczos', loop=0)
.overwrite_output()
.run(quiet=True)
)
def __convert_video(self, video_path, output_video_path, preview=False):
if self.video_has_audio and not preview:
new_path = output_video_path + str(random.randint(0, 999)) + "_c.mp4"
in1 = ffmpeg.input(output_video_path)
in2 = ffmpeg.input(video_path)
out = ffmpeg.output(in1.video, in2.audio, new_path, video_bitrate=self.ffmpeg_video_bitrate, vcodec=self.ffmpeg_video_encoder)
out.run(overwrite_output=True, quiet=True)
else:
new_path = output_video_path
print(f"Refaced video saved at: {os.path.abspath(new_path)}")
return new_path
def reface_image(self, image_path, faces, disable_similarity=False, multiple_faces_mode=False):
self.prepare_faces(faces, disable_similarity=disable_similarity, multiple_faces_mode=multiple_faces_mode)
self.first_face = False if multiple_faces_mode else (faces[0].get("origin") is None or disable_similarity)
bgr_image = cv2.imread(image_path)
if bgr_image is None:
raise ValueError("Failed to read input image")
refaced_bgr = self.process_first_face(bgr_image.copy()) if self.first_face else self.process_faces(bgr_image.copy())
refaced_rgb = cv2.cvtColor(refaced_bgr, cv2.COLOR_BGR2RGB)
pil_img = Image.fromarray(refaced_rgb)
os.makedirs("output", exist_ok=True)
original_name = osp.splitext(osp.basename(image_path))[0]
timestamp = str(int(time.time()))
filename = f"{original_name}_{timestamp}.jpg"
output_path = os.path.join("output", filename)
pil_img.save(output_path, format='JPEG', quality=100, subsampling=0)
output_path = enhance_image(output_path)
print(f"Saved refaced image to {output_path}")
return output_path
def extract_faces_from_image(self, image_path, max_faces=5):
frame = cv2.imread(image_path)
if frame is None:
raise ValueError("Failed to read input image for face extraction.")
faces = self.__get_faces(frame, max_num=max_faces)
cropped_faces = []
for face in faces:
x1, y1, x2, y2 = map(int, face.bbox)
x1 = max(x1, 0)
y1 = max(y1, 0)
x2 = min(x2, frame.shape[1])
y2 = min(y2, frame.shape[0])
cropped = frame[y1:y2, x1:x2]
pil_img = Image.fromarray(cv2.cvtColor(cropped, cv2.COLOR_BGR2RGB))
temp_file = tempfile.NamedTemporaryFile(delete=False, suffix=".png")
pil_img.save(temp_file.name)
cropped_faces.append(temp_file.name)
if len(cropped_faces) >= max_faces:
break
return cropped_faces
def __try_ffmpeg_encoder(self, vcodec):
2025-04-10 22:08:59 +01:00
command = ['ffmpeg', '-y', '-f', 'lavfi', '-i', 'testsrc=duration=1:size=1280x720:rate=30', '-vcodec', vcodec, 'testsrc.mp4']
try:
subprocess.run(command, check=True, capture_output=True).stderr
2025-04-10 22:08:59 +01:00
except subprocess.CalledProcessError:
return False
return True
2025-04-10 22:08:59 +01:00
def __check_encoders(self):
self.ffmpeg_video_encoder = 'libx264'
self.ffmpeg_video_bitrate = '0'
pattern = r"encoders: ([a-zA-Z0-9_]+(?: [a-zA-Z0-9_]+)*)"
command = ['ffmpeg', '-codecs', '--list-encoders']
commandout = subprocess.run(command, check=True, capture_output=True).stdout
result = commandout.decode('utf-8').split('\n')
for r in result:
2025-04-10 22:08:59 +01:00
if "264" in r:
encoders = re.search(pattern, r)
if encoders:
for v_c in Refacer.VIDEO_CODECS:
for v_k in encoders.group(1).split(' '):
if v_c == v_k and self.__try_ffmpeg_encoder(v_k):
self.ffmpeg_video_encoder = v_k
self.ffmpeg_video_bitrate = Refacer.VIDEO_CODECS[v_k]
return
VIDEO_CODECS = {
2025-04-10 22:08:59 +01:00
'h264_videotoolbox': '0',
'h264_nvenc': '0',
'libx264': '0'
}