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import os
import yaml
import glob
import numpy as np
import cv2
import torch
from torch import nn
from torch.utils.data import Dataset, DataLoader
from torchvision.models.detection.transform import GeneralizedRCNNTransform
from albumentations import Compose, SmallestMaxSize, CenterCrop, Normalize, PadIfNeeded
from albumentations.pytorch import ToTensor
from dsfacedetector.face_ssd_infer import SSD
from tracker.iou_tracker import track_iou
from efficientnet_pytorch.model import EfficientNet, MBConvBlock
DETECTOR_WEIGHTS_PATH = 'WIDERFace_DSFD_RES152.fp16.pth'
DETECTOR_THRESHOLD = 0.3
DETECTOR_MIN_SIZE = 512
DETECTOR_MAX_SIZE = 512
DETECTOR_MEAN = (104.0, 117.0, 123.0)
DETECTOR_STD = (1.0, 1.0, 1.0)
DETECTOR_BATCH_SIZE = 16
DETECTOR_STEP = 3
TRACKER_SIGMA_L = 0.3
TRACKER_SIGMA_H = 0.9
TRACKER_SIGMA_IOU = 0.3
TRACKER_T_MIN = 7
VIDEO_MODEL_BBOX_MULT = 1.5
VIDEO_MODEL_MIN_SIZE = 224
VIDEO_MODEL_CROP_HEIGHT = 224
VIDEO_MODEL_CROP_WIDTH = 192
VIDEO_FACE_MODEL_TRACK_STEP = 2
VIDEO_SEQUENCE_MODEL_SEQUENCE_LENGTH = 7
VIDEO_SEQUENCE_MODEL_TRACK_STEP = 14
VIDEO_SEQUENCE_MODEL_WEIGHTS_PATH = 'efficientnet-b7_ns_seq_aa-original-mstd0.5_100k_v4_cad79a/snapshot_100000.fp16.pth'
FIRST_VIDEO_FACE_MODEL_WEIGHTS_PATH = 'efficientnet-b7_ns_aa-original-mstd0.5_large_crop_100k_v4_cad79a/snapshot_100000.fp16.pth'
SECOND_VIDEO_FACE_MODEL_WEIGHTS_PATH = 'efficientnet-b7_ns_aa-original-mstd0.5_re_100k_v4_cad79a/snapshot_100000.fp16.pth'
VIDEO_BATCH_SIZE = 1
VIDEO_TARGET_FPS = 15
VIDEO_NUM_WORKERS = 0
class UnlabeledVideoDataset(Dataset):
def __init__(self, root_dir, content=None):
self.root_dir = os.path.normpath(root_dir)
if content is not None:
self.content = content
else:
self.content = []
for path in glob.iglob(os.path.join(self.root_dir, '**', '*.mp4'), recursive=True):
rel_path = path[len(self.root_dir) + 1:]
self.content.append(rel_path)
self.content = sorted(self.content)
def __len__(self):
return len(self.content)
def __getitem__(self, idx):
rel_path = self.content[idx]
path = os.path.join(self.root_dir, rel_path)
sample = {
'frames': [],
'index': idx
}
capture = cv2.VideoCapture(path)
frame_count = int(capture.get(cv2.CAP_PROP_FRAME_COUNT))
if frame_count == 0:
return sample
fps = int(capture.get(cv2.CAP_PROP_FPS))
video_step = round(fps / VIDEO_TARGET_FPS)
if video_step == 0:
return sample
for i in range(frame_count):
capture.grab()
if i % video_step != 0:
continue
ret, frame = capture.retrieve()
if not ret:
continue
sample['frames'].append(frame)
return sample
class Detector(object):
def __init__(self, weights_path):
self.model = SSD('test')
self.model.cuda().eval()
state = torch.load(weights_path, map_location=lambda storage, loc: storage)
state = {key: value.float() for key, value in state.items()}
self.model.load_state_dict(state)
self.transform = GeneralizedRCNNTransform(DETECTOR_MIN_SIZE, DETECTOR_MAX_SIZE, DETECTOR_MEAN, DETECTOR_STD)
self.transform.eval()
def detect(self, images):
images = torch.stack([torch.from_numpy(image).cuda() for image in images])
images = images.transpose(1, 3).transpose(2, 3).float()
original_image_sizes = [img.shape[-2:] for img in images]
images, _ = self.transform(images, None)
with torch.no_grad():
detections_batch = self.model(images.tensors).cpu().numpy()
result = []
for detections, image_size in zip(detections_batch, images.image_sizes):
scores = detections[1, :, 0]
keep_idxs = scores > DETECTOR_THRESHOLD
detections = detections[1, keep_idxs, :]
detections = detections[:, [1, 2, 3, 4, 0]]
detections[:, 0] *= image_size[1]
detections[:, 1] *= image_size[0]
detections[:, 2] *= image_size[1]
detections[:, 3] *= image_size[0]
result.append({
'scores': torch.from_numpy(detections[:, 4]),
'boxes': torch.from_numpy(detections[:, :4])
})
result = self.transform.postprocess(result, images.image_sizes, original_image_sizes)
return result
def get_tracks(detections):
if len(detections) == 0:
return []
converted_detections = []
frame_bbox_to_face_idx = {}
for i, detections_per_frame in enumerate(detections):
converted_detections_per_frame = []
for j, (bbox, score) in enumerate(zip(detections_per_frame['boxes'], detections_per_frame['scores'])):
bbox = tuple(bbox.tolist())
frame_bbox_to_face_idx[(i, bbox)] = j
converted_detections_per_frame.append({'bbox': bbox, 'score': score})
converted_detections.append(converted_detections_per_frame)
tracks = track_iou(converted_detections, TRACKER_SIGMA_L, TRACKER_SIGMA_H, TRACKER_SIGMA_IOU, TRACKER_T_MIN)
tracks_converted = []
for track in tracks:
start_frame = track['start_frame'] - 1
bboxes = np.array(track['bboxes'], dtype=np.float32)
frame_indices = np.arange(start_frame, start_frame + len(bboxes)) * DETECTOR_STEP
interp_frame_indices = np.arange(frame_indices[0], frame_indices[-1] + 1)
interp_bboxes = np.zeros((len(interp_frame_indices), 4), dtype=np.float32)
for i in range(4):
interp_bboxes[:, i] = np.interp(interp_frame_indices, frame_indices, bboxes[:, i])
track_converted = []
for frame_idx, bbox in zip(interp_frame_indices, interp_bboxes):
track_converted.append((frame_idx, bbox))
tracks_converted.append(track_converted)
return tracks_converted
class SeqExpandConv(nn.Module):
def __init__(self, in_channels, out_channels, seq_length):
super(SeqExpandConv, self).__init__()
self.conv = nn.Conv3d(in_channels, out_channels, kernel_size=(3, 1, 1), padding=(1, 0, 0), bias=False)
self.seq_length = seq_length
def forward(self, x):
batch_size, in_channels, height, width = x.shape
x = x.view(batch_size // self.seq_length, self.seq_length, in_channels, height, width)
x = self.conv(x.transpose(1, 2).contiguous()).transpose(2, 1).contiguous()
x = x.flatten(0, 1)
return x
class TrackSequencesClassifier(object):
def __init__(self, weights_path):
model = EfficientNet.from_name('efficientnet-b7', override_params={'num_classes': 1})
for module in model.modules():
if isinstance(module, MBConvBlock):
if module._block_args.expand_ratio != 1:
expand_conv = module._expand_conv
seq_expand_conv = SeqExpandConv(expand_conv.in_channels, expand_conv.out_channels,
VIDEO_SEQUENCE_MODEL_SEQUENCE_LENGTH)
module._expand_conv = seq_expand_conv
self.model = model.cuda().eval()
normalize = Normalize(mean=[0.485, 0.456, 0.406], std=[0.229, 0.224, 0.225])
self.transform = Compose(
[SmallestMaxSize(VIDEO_MODEL_MIN_SIZE), CenterCrop(VIDEO_MODEL_CROP_HEIGHT, VIDEO_MODEL_CROP_WIDTH),
normalize, ToTensor()])
state = torch.load(weights_path, map_location=lambda storage, loc: storage)
state = {key: value.float() for key, value in state.items()}
self.model.load_state_dict(state)
def classify(self, track_sequences):
track_sequences = [torch.stack([self.transform(image=face)['image'] for face in sequence]) for sequence in
track_sequences]
track_sequences = torch.cat(track_sequences).cuda()
with torch.no_grad():
track_probs = torch.sigmoid(self.model(track_sequences)).flatten().cpu().numpy()
return track_probs
class TrackFacesClassifier(object):
def __init__(self, first_weights_path, second_weights_path):
first_model = EfficientNet.from_name('efficientnet-b7', override_params={'num_classes': 1})
self.first_model = first_model.cuda().eval()
second_model = EfficientNet.from_name('efficientnet-b7', override_params={'num_classes': 1})
self.second_model = second_model.cuda().eval()
first_normalize = Normalize(mean=[0.485, 0.456, 0.406], std=[0.229, 0.224, 0.225])
self.first_transform = Compose(
[SmallestMaxSize(VIDEO_MODEL_CROP_WIDTH), PadIfNeeded(VIDEO_MODEL_CROP_HEIGHT, VIDEO_MODEL_CROP_WIDTH),
CenterCrop(VIDEO_MODEL_CROP_HEIGHT, VIDEO_MODEL_CROP_WIDTH), first_normalize, ToTensor()])
second_normalize = Normalize(mean=[0.485, 0.456, 0.406], std=[0.229, 0.224, 0.225])
self.second_transform = Compose(
[SmallestMaxSize(VIDEO_MODEL_MIN_SIZE), CenterCrop(VIDEO_MODEL_CROP_HEIGHT, VIDEO_MODEL_CROP_WIDTH),
second_normalize, ToTensor()])
first_state = torch.load(first_weights_path, map_location=lambda storage, loc: storage)
first_state = {key: value.float() for key, value in first_state.items()}
self.first_model.load_state_dict(first_state)
second_state = torch.load(second_weights_path, map_location=lambda storage, loc: storage)
second_state = {key: value.float() for key, value in second_state.items()}
self.second_model.load_state_dict(second_state)
def classify(self, track_faces):
first_track_faces = []
second_track_faces = []
for i, face in enumerate(track_faces):
if i % 4 < 2:
first_track_faces.append(self.first_transform(image=face)['image'])
else:
second_track_faces.append(self.second_transform(image=face)['image'])
first_track_faces = torch.stack(first_track_faces).cuda()
second_track_faces = torch.stack(second_track_faces).cuda()
with torch.no_grad():
first_track_probs = torch.sigmoid(self.first_model(first_track_faces)).flatten().cpu().numpy()
second_track_probs = torch.sigmoid(self.second_model(second_track_faces)).flatten().cpu().numpy()
track_probs = np.concatenate((first_track_probs, second_track_probs))
return track_probs
def extract_sequence(frames, start_idx, bbox, flip):
frame_height, frame_width, _ = frames[start_idx].shape
xmin, ymin, xmax, ymax = bbox
width = xmax - xmin
height = ymax - ymin
xcenter = xmin + width / 2
ycenter = ymin + height / 2
width = width * VIDEO_MODEL_BBOX_MULT
height = height * VIDEO_MODEL_BBOX_MULT
xmin = xcenter - width / 2
ymin = ycenter - height / 2
xmax = xmin + width
ymax = ymin + height
xmin = max(int(xmin), 0)
xmax = min(int(xmax), frame_width)
ymin = max(int(ymin), 0)
ymax = min(int(ymax), frame_height)
sequence = []
for i in range(VIDEO_SEQUENCE_MODEL_SEQUENCE_LENGTH):
face = cv2.cvtColor(frames[start_idx + i][ymin:ymax, xmin:xmax], cv2.COLOR_BGR2RGB)
sequence.append(face)
if flip:
sequence = [face[:, ::-1] for face in sequence]
return sequence
def extract_face(frame, bbox, flip):
frame_height, frame_width, _ = frame.shape
xmin, ymin, xmax, ymax = bbox
width = xmax - xmin
height = ymax - ymin
xcenter = xmin + width / 2
ycenter = ymin + height / 2
width = width * VIDEO_MODEL_BBOX_MULT
height = height * VIDEO_MODEL_BBOX_MULT
xmin = xcenter - width / 2
ymin = ycenter - height / 2
xmax = xmin + width
ymax = ymin + height
xmin = max(int(xmin), 0)
xmax = min(int(xmax), frame_width)
ymin = max(int(ymin), 0)
ymax = min(int(ymax), frame_height)
face = cv2.cvtColor(frame[ymin:ymax, xmin:xmax], cv2.COLOR_BGR2RGB)
if flip:
face = face[:, ::-1].copy()
return face
def main():
with open('config.yaml', 'r') as f:
config = yaml.load(f)
detector = Detector(os.path.join(config['MODELS_PATH'], DETECTOR_WEIGHTS_PATH))
track_sequences_classifier = TrackSequencesClassifier(os.path.join(config['MODELS_PATH'], VIDEO_SEQUENCE_MODEL_WEIGHTS_PATH))
track_faces_classifier = TrackFacesClassifier(os.path.join(config['MODELS_PATH'], FIRST_VIDEO_FACE_MODEL_WEIGHTS_PATH),
os.path.join(config['MODELS_PATH'], SECOND_VIDEO_FACE_MODEL_WEIGHTS_PATH))
dataset = UnlabeledVideoDataset(os.path.join(config['DFDC_DATA_PATH'], 'test_videos'))
print('Total number of videos: {}'.format(len(dataset)))
loader = DataLoader(dataset, batch_size=VIDEO_BATCH_SIZE, shuffle=False, num_workers=VIDEO_NUM_WORKERS,
collate_fn=lambda X: X,
drop_last=False)
video_name_to_score = {}
for video_sample in loader:
frames = video_sample[0]['frames']
detector_frames = frames[::DETECTOR_STEP]
video_idx = video_sample[0]['index']
video_rel_path = dataset.content[video_idx]
video_name = os.path.basename(video_rel_path)
if len(frames) == 0:
video_name_to_score[video_name] = 0.5
continue
detections = []
for start in range(0, len(detector_frames), DETECTOR_BATCH_SIZE):
end = min(len(detector_frames), start + DETECTOR_BATCH_SIZE)
detections_batch = detector.detect(detector_frames[start:end])
for detections_per_frame in detections_batch:
detections.append({key: value.cpu().numpy() for key, value in detections_per_frame.items()})
tracks = get_tracks(detections)
if len(tracks) == 0:
video_name_to_score[video_name] = 0.5
continue
sequence_track_scores = []
for track in tracks:
track_sequences = []
for i, (start_idx, _) in enumerate(
track[:-VIDEO_SEQUENCE_MODEL_SEQUENCE_LENGTH + 1:VIDEO_SEQUENCE_MODEL_TRACK_STEP]):
assert start_idx >= 0 and start_idx + VIDEO_SEQUENCE_MODEL_SEQUENCE_LENGTH <= len(frames)
_, bbox = track[i * VIDEO_SEQUENCE_MODEL_TRACK_STEP + VIDEO_SEQUENCE_MODEL_SEQUENCE_LENGTH // 2]
track_sequences.append(extract_sequence(frames, start_idx, bbox, i % 2 == 0))
sequence_track_scores.append(track_sequences_classifier.classify(track_sequences))
face_track_scores = []
for track in tracks:
track_faces = []
for i, (frame_idx, bbox) in enumerate(track[::VIDEO_FACE_MODEL_TRACK_STEP]):
face = extract_face(frames[frame_idx], bbox, i % 2 == 0)
track_faces.append(face)
face_track_scores.append(track_faces_classifier.classify(track_faces))
sequence_track_scores = np.concatenate(sequence_track_scores)
face_track_scores = np.concatenate(face_track_scores)
track_probs = np.concatenate((sequence_track_scores, face_track_scores))
delta = track_probs - 0.5
sign = np.sign(delta)
pos_delta = delta > 0
neg_delta = delta < 0
track_probs[pos_delta] = np.clip(0.5 + sign[pos_delta] * np.power(abs(delta[pos_delta]), 0.65), 0.01, 0.99)
track_probs[neg_delta] = np.clip(0.5 + sign[neg_delta] * np.power(abs(delta[neg_delta]), 0.65), 0.01, 0.99)
weights = np.power(abs(delta), 1.0) + 1e-4
video_score = float((track_probs * weights).sum() / weights.sum())
video_name_to_score[video_name] = video_score
print('NUM DETECTION FRAMES: {}, VIDEO SCORE: {}. {}'.format(len(detections), video_name_to_score[video_name],
video_rel_path))
os.makedirs(os.path.dirname(config['SUBMISSION_PATH']), exist_ok=True)
with open(config['SUBMISSION_PATH'], 'w') as f:
f.write('filename,label\n')
for video_name in sorted(video_name_to_score):
score = video_name_to_score[video_name]
f.write('{},{}\n'.format(video_name, score))
main() |