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faceit.py
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faceit.py
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import os
from argparse import Namespace
import argparse
import youtube_dl
import cv2
import time
import tqdm
import numpy
from moviepy.video.io.VideoFileClip import VideoFileClip
from moviepy.video.io.ImageSequenceClip import ImageSequenceClip
from moviepy.video.fx.all import crop
from moviepy.editor import AudioFileClip, clips_array, TextClip, CompositeVideoClip
import shutil
from pathlib import Path
import sys
sys.path.append('faceswap')
from lib.utils import FullHelpArgumentParser
from scripts.extract import ExtractTrainingData
from scripts.train import TrainingProcessor
from scripts.convert import ConvertImage
from lib.faces_detect import detect_faces
from plugins.PluginLoader import PluginLoader
from lib.FaceFilter import FaceFilter
class FaceIt:
VIDEO_PATH = 'data/videos'
PERSON_PATH = 'data/persons'
PROCESSED_PATH = 'data/processed'
OUTPUT_PATH = 'data/output'
MODEL_PATH = 'models'
MODELS = {}
@classmethod
def add_model(cls, model):
FaceIt.MODELS[model._name] = model
def __init__(self, name, person_a, person_b):
def _create_person_data(person):
return {
'name' : person,
'videos' : [],
'faces' : os.path.join(FaceIt.PERSON_PATH, person + '.jpg'),
'photos' : []
}
self._name = name
self._people = {
person_a : _create_person_data(person_a),
person_b : _create_person_data(person_b),
}
self._person_a = person_a
self._person_b = person_b
self._faceswap = FaceSwapInterface()
if not os.path.exists(os.path.join(FaceIt.VIDEO_PATH)):
os.makedirs(FaceIt.VIDEO_PATH)
def add_photos(self, person, photo_dir):
self._people[person]['photos'].append(photo_dir)
def add_video(self, person, name, url=None, fps=20):
self._people[person]['videos'].append({
'name' : name,
'url' : url,
'fps' : fps
})
def fetch(self):
self._process_media(self._fetch_video)
def extract_frames(self):
self._process_media(self._extract_frames)
def extract_faces(self):
self._process_media(self._extract_faces)
self._process_media(self._extract_faces_from_photos, 'photos')
def all_videos(self):
return self._people[self._person_a]['videos'] + self._people[self._person_b]['videos']
def _process_media(self, func, media_type = 'videos'):
for person in self._people:
for video in self._people[person][media_type]:
func(person, video)
def _video_path(self, video):
return os.path.join(FaceIt.VIDEO_PATH, video['name'])
def _video_frames_path(self, video):
return os.path.join(FaceIt.PROCESSED_PATH, video['name'] + '_frames')
def _video_faces_path(self, video):
return os.path.join(FaceIt.PROCESSED_PATH, video['name'] + '_faces')
def _model_path(self, use_gan = False):
path = FaceIt.MODEL_PATH
if use_gan:
path += "_gan"
return os.path.join(path, self._name)
def _model_data_path(self):
return os.path.join(FaceIt.PROCESSED_PATH, "model_data_" + self._name)
def _model_person_data_path(self, person):
return os.path.join(self._model_data_path(), person)
def _fetch_video(self, person, video):
options = {
'format': 'bestvideo[ext=mp4]+bestaudio[ext=m4a]/bestvideo+bestaudio',
'outtmpl': os.path.join(FaceIt.VIDEO_PATH, video['name']),
'merge_output_format' : 'mp4'
}
with youtube_dl.YoutubeDL(options) as ydl:
x = ydl.download([video['url']])
def _extract_frames(self, person, video):
video_frames_dir = self._video_frames_path(video)
video_clip = VideoFileClip(self._video_path(video))
start_time = time.time()
print('[extract-frames] about to extract_frames for {}, fps {}, length {}s'.format(video_frames_dir, video_clip.fps, video_clip.duration))
if os.path.exists(video_frames_dir):
print('[extract-frames] frames already exist, skipping extraction: {}'.format(video_frames_dir))
return
os.makedirs(video_frames_dir)
frame_num = 0
for frame in tqdm.tqdm(video_clip.iter_frames(fps=video['fps']), total = video_clip.fps * video_clip.duration):
video_frame_file = os.path.join(video_frames_dir, 'frame_{:03d}.jpg'.format(frame_num))
frame = cv2.cvtColor(frame, cv2.COLOR_BGR2RGB) # Swap RGB to BGR to work with OpenCV
cv2.imwrite(video_frame_file, frame)
frame_num += 1
print('[extract] finished extract_frames for {}, total frames {}, time taken {:.0f}s'.format(
video_frames_dir, frame_num-1, time.time() - start_time))
def _extract_faces(self, person, video):
video_faces_dir = self._video_faces_path(video)
start_time = time.time()
print('[extract-faces] about to extract faces for {}'.format(video_faces_dir))
if os.path.exists(video_faces_dir):
print('[extract-faces] faces already exist, skipping face extraction: {}'.format(video_faces_dir))
return
os.makedirs(video_faces_dir)
self._faceswap.extract(self._video_frames_path(video), video_faces_dir, self._people[person]['faces'])
def _extract_faces_from_photos(self, person, photo_dir):
photo_faces_dir = self._video_faces_path({ 'name' : photo_dir })
start_time = time.time()
print('[extract-faces] about to extract faces for {}'.format(photo_faces_dir))
if os.path.exists(photo_faces_dir):
print('[extract-faces] faces already exist, skipping face extraction: {}'.format(photo_faces_dir))
return
os.makedirs(photo_faces_dir)
self._faceswap.extract(self._video_path({ 'name' : photo_dir }), photo_faces_dir, self._people[person]['faces'])
def preprocess(self):
self.fetch()
self.extract_frames()
self.extract_faces()
def _symlink_faces_for_model(self, person, video):
if isinstance(video, str):
video = { 'name' : video }
for face_file in os.listdir(self._video_faces_path(video)):
target_file = os.path.join(self._model_person_data_path(person), video['name'] + "_" + face_file)
face_file_path = os.path.join(os.getcwd(), self._video_faces_path(video), face_file)
os.symlink(face_file_path, target_file)
def train(self, use_gan = False):
# Setup directory structure for model, and create one director for person_a faces, and
# another for person_b faces containing symlinks to all faces.
if not os.path.exists(self._model_path(use_gan)):
os.makedirs(self._model_path(use_gan))
if os.path.exists(self._model_data_path()):
shutil.rmtree(self._model_data_path())
for person in self._people:
os.makedirs(self._model_person_data_path(person))
self._process_media(self._symlink_faces_for_model)
self._faceswap.train(self._model_person_data_path(self._person_a), self._model_person_data_path(self._person_b), self._model_path(use_gan), use_gan)
def convert(self, video_file, swap_model = False, duration = None, start_time = None, use_gan = False, face_filter = False, photos = True, crop_x = None, width = None, side_by_side = False):
# Magic incantation to not have tensorflow blow up with an out of memory error.
import tensorflow as tf
import keras.backend.tensorflow_backend as K
config = tf.ConfigProto()
config.gpu_options.allow_growth = True
config.gpu_options.visible_device_list="0"
K.set_session(tf.Session(config=config))
# Load model
model_name = "Original"
converter_name = "Masked"
if use_gan:
model_name = "GAN"
converter_name = "GAN"
model = PluginLoader.get_model(model_name)(Path(self._model_path(use_gan)))
if not model.load(swap_model):
print('model Not Found! A valid model must be provided to continue!')
exit(1)
# Load converter
converter = PluginLoader.get_converter(converter_name)
converter = converter(model.converter(False),
blur_size=8,
seamless_clone=True,
mask_type="facehullandrect",
erosion_kernel_size=None,
smooth_mask=True,
avg_color_adjust=True)
# Load face filter
filter_person = self._person_a
if swap_model:
filter_person = self._person_b
filter = FaceFilter(self._people[filter_person]['faces'])
# Define conversion method per frame
def _convert_frame(frame, convert_colors = True):
if convert_colors:
frame = cv2.cvtColor(frame, cv2.COLOR_BGR2RGB) # Swap RGB to BGR to work with OpenCV
for face in detect_faces(frame, "cnn"):
if (not face_filter) or (face_filter and filter.check(face)):
frame = converter.patch_image(frame, face)
frame = frame.astype(numpy.float32)
if convert_colors:
frame = cv2.cvtColor(frame, cv2.COLOR_BGR2RGB) # Swap RGB to BGR to work with OpenCV
return frame
def _convert_helper(get_frame, t):
return _convert_frame(get_frame(t))
media_path = self._video_path({ 'name' : video_file })
if not photos:
# Process video; start loading the video clip
video = VideoFileClip(media_path)
# If a duration is set, trim clip
if duration:
video = video.subclip(start_time, start_time + duration)
# Resize clip before processing
if width:
video = video.resize(width = width)
# Crop clip if desired
if crop_x:
video = video.fx(crop, x2 = video.w / 2)
# Kick off convert frames for each frame
new_video = video.fl(_convert_helper)
# Stack clips side by side
if side_by_side:
def add_caption(caption, clip):
text = (TextClip(caption, font='Amiri-regular', color='white', fontsize=80).
margin(40).
set_duration(clip.duration).
on_color(color=(0,0,0), col_opacity=0.6))
return CompositeVideoClip([clip, text])
video = add_caption("Original", video)
new_video = add_caption("Swapped", new_video)
final_video = clips_array([[video], [new_video]])
else:
final_video = new_video
# Resize clip after processing
#final_video = final_video.resize(width = (480 * 2))
# Write video
output_path = os.path.join(self.OUTPUT_PATH, video_file)
final_video.write_videofile(output_path, rewrite_audio = True)
# Clean up
del video
del new_video
del final_video
else:
# Process a directory of photos
for face_file in os.listdir(media_path):
face_path = os.path.join(media_path, face_file)
image = cv2.imread(face_path)
image = _convert_frame(image, convert_colors = False)
cv2.imwrite(os.path.join(self.OUTPUT_PATH, face_file), image)
class FaceSwapInterface:
def __init__(self):
self._parser = FullHelpArgumentParser()
self._subparser = self._parser.add_subparsers()
def extract(self, input_dir, output_dir, filter_path):
extract = ExtractTrainingData(
self._subparser, "extract", "Extract the faces from a pictures.")
args_str = "extract --input-dir {} --output-dir {} --processes 1 --detector cnn --filter {}"
args_str = args_str.format(input_dir, output_dir, filter_path)
self._run_script(args_str)
def train(self, input_a_dir, input_b_dir, model_dir, gan = False):
model_type = "Original"
if gan:
model_type = "GAN"
train = TrainingProcessor(
self._subparser, "train", "This command trains the model for the two faces A and B.")
args_str = "train --input-A {} --input-B {} --model-dir {} --trainer {} --batch-size {} --write-image"
args_str = args_str.format(input_a_dir, input_b_dir, model_dir, model_type, 512)
self._run_script(args_str)
def _run_script(self, args_str):
args = self._parser.parse_args(args_str.split(' '))
args.func(args)
if __name__ == '__main__':
faceit = FaceIt('fallon_to_oliver', 'fallon', 'oliver')
faceit.add_video('oliver', 'oliver_trumpcard.mp4', 'https://www.youtube.com/watch?v=JlxQ3IUWT0I')
faceit.add_video('oliver', 'oliver_taxreform.mp4', 'https://www.youtube.com/watch?v=g23w7WPSaU8')
faceit.add_video('oliver', 'oliver_zazu.mp4', 'https://www.youtube.com/watch?v=Y0IUPwXSQqg')
faceit.add_video('oliver', 'oliver_pastor.mp4', 'https://www.youtube.com/watch?v=mUndxpbufkg')
faceit.add_video('oliver', 'oliver_cookie.mp4', 'https://www.youtube.com/watch?v=H916EVndP_A')
faceit.add_video('oliver', 'oliver_lorelai.mp4', 'https://www.youtube.com/watch?v=G1xP2f1_1Jg')
faceit.add_video('fallon', 'fallon_mom.mp4', 'https://www.youtube.com/watch?v=gjXrm2Q-te4')
faceit.add_video('fallon', 'fallon_charlottesville.mp4', 'https://www.youtube.com/watch?v=E9TJsw67OmE')
faceit.add_video('fallon', 'fallon_dakota.mp4', 'https://www.youtube.com/watch?v=tPtMP_NAMz0')
faceit.add_video('fallon', 'fallon_single.mp4', 'https://www.youtube.com/watch?v=xfFVuXN0FSI')
faceit.add_video('fallon', 'fallon_sesamestreet.mp4', 'https://www.youtube.com/watch?v=SHogg7pJI_M')
faceit.add_video('fallon', 'fallon_emmastone.mp4', 'https://www.youtube.com/watch?v=bLBSoC_2IY8')
faceit.add_video('fallon', 'fallon_xfinity.mp4', 'https://www.youtube.com/watch?v=7JwBBZRLgkM')
faceit.add_video('fallon', 'fallon_bank.mp4', 'https://www.youtube.com/watch?v=q-0hmYHWVgE')
FaceIt.add_model(faceit)
parser = argparse.ArgumentParser()
parser.add_argument('task', choices = ['preprocess', 'train', 'convert'])
parser.add_argument('model', choices = FaceIt.MODELS.keys())
parser.add_argument('video', nargs = '?')
parser.add_argument('--duration', type = int, default = None)
parser.add_argument('--photos', action = 'store_true', default = False)
parser.add_argument('--swap-model', action = 'store_true', default = False)
parser.add_argument('--face-filter', action = 'store_true', default = False)
parser.add_argument('--start-time', type = int, default = 0)
parser.add_argument('--crop-x', type = int, default = None)
parser.add_argument('--width', type = int, default = None)
parser.add_argument('--side-by-side', action = 'store_true', default = False)
args = parser.parse_args()
faceit = FaceIt.MODELS[args.model]
if args.task == 'preprocess':
faceit.preprocess()
elif args.task == 'train':
faceit.train()
elif args.task == 'convert':
if not args.video:
print('Need a video to convert. Some ideas: {}'.format(", ".join([video['name'] for video in faceit.all_videos()])))
else:
faceit.convert(args.video, duration = args.duration, swap_model = args.swap_model, face_filter = args.face_filter, start_time = args.start_time, photos = args.photos, crop_x = args.crop_x, width = args.width, side_by_side = args.side_by_side)