| import os, torch, numpy, cv2, random, glob, python_speech_features, json, math
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| from scipy.io import wavfile
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| from torchvision.transforms import RandomCrop
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| from operator import itemgetter
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| from torchvggish import vggish_input, vggish_params, mel_features
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|
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|
|
| def overlap(audio, noiseAudio):
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| snr = [random.uniform(-5, 5)]
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| if len(noiseAudio) < len(audio):
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| shortage = len(audio) - len(noiseAudio)
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| noiseAudio = numpy.pad(noiseAudio, (0, shortage), 'wrap')
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| else:
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| noiseAudio = noiseAudio[:len(audio)]
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| noiseDB = 10 * numpy.log10(numpy.mean(abs(noiseAudio**2)) + 1e-4)
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| cleanDB = 10 * numpy.log10(numpy.mean(abs(audio**2)) + 1e-4)
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| noiseAudio = numpy.sqrt(10**((cleanDB - noiseDB - snr) / 10)) * noiseAudio
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| audio = audio + noiseAudio
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| return audio.astype(numpy.int16)
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|
|
|
|
| def load_audio(data, dataPath, numFrames, audioAug, audioSet=None):
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| dataName = data[0]
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| fps = float(data[2])
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| audio = audioSet[dataName]
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| if audioAug == True:
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| augType = random.randint(0, 1)
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| if augType == 1:
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| audio = overlap(dataName, audio, audioSet)
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| else:
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| audio = audio
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|
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| audio = python_speech_features.mfcc(audio,
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| 16000,
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| numcep=13,
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| winlen=0.025 * 25 / fps,
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| winstep=0.010 * 25 / fps)
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| maxAudio = int(numFrames * 4)
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| if audio.shape[0] < maxAudio:
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| shortage = maxAudio - audio.shape[0]
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| audio = numpy.pad(audio, ((0, shortage), (0, 0)), 'wrap')
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| audio = audio[:int(round(numFrames * 4)), :]
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| return audio
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|
|
| def load_single_audio(audio, fps, numFrames, audioAug=False):
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| audio = python_speech_features.mfcc(audio,
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| 16000,
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| numcep=13,
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| winlen=0.025 * 25 / fps,
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| winstep=0.010 * 25 / fps)
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| maxAudio = int(numFrames * 4)
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| if audio.shape[0] < maxAudio:
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| shortage = maxAudio - audio.shape[0]
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| audio = numpy.pad(audio, ((0, shortage), (0, 0)), 'wrap')
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| audio = audio[:int(round(numFrames * 4)), :]
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| return audio
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|
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|
|
| def load_visual(data, dataPath, numFrames, visualAug):
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| dataName = data[0]
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| videoName = data[0][:11]
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| faceFolderPath = os.path.join(dataPath, videoName, dataName)
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| faceFiles = glob.glob("%s/*.jpg" % faceFolderPath)
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| sortedFaceFiles = sorted(faceFiles,
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| key=lambda data: (float(data.split('/')[-1][:-4])),
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| reverse=False)
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| faces = []
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| H = 112
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| if visualAug == True:
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| new = int(H * random.uniform(0.7, 1))
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| x, y = numpy.random.randint(0, H - new), numpy.random.randint(0, H - new)
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| M = cv2.getRotationMatrix2D((H / 2, H / 2), random.uniform(-15, 15), 1)
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| augType = random.choice(['orig', 'flip', 'crop', 'rotate'])
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| else:
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| augType = 'orig'
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| for faceFile in sortedFaceFiles[:numFrames]:
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| face = cv2.imread(faceFile)
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|
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| face = cv2.cvtColor(face, cv2.COLOR_BGR2GRAY)
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| face = cv2.resize(face, (H, H))
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| if augType == 'orig':
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| faces.append(face)
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| elif augType == 'flip':
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| faces.append(cv2.flip(face, 1))
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| elif augType == 'crop':
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| faces.append(cv2.resize(face[y:y + new, x:x + new], (H, H)))
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| elif augType == 'rotate':
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| faces.append(cv2.warpAffine(face, M, (H, H)))
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| faces = numpy.array(faces)
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| return faces
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|
|
|
|
| def load_label(data, numFrames):
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| res = []
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| labels = data[3].replace('[', '').replace(']', '')
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| labels = labels.split(',')
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| for label in labels:
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| res.append(int(label))
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| res = numpy.array(res[:numFrames])
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| return res
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|
|
|
|
| class train_loader(object):
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|
|
| def __init__(self, cfg, trialFileName, audioPath, visualPath, num_speakers):
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| self.cfg = cfg
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| self.audioPath = audioPath
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| self.visualPath = visualPath
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| self.candidate_speakers = num_speakers
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| self.path = os.path.join(cfg.DATA.dataPathAVA, "csv")
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| self.entity_data = json.load(open(os.path.join(self.path, 'train_entity.json')))
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| self.ts_to_entity = json.load(open(os.path.join(self.path, 'train_ts.json')))
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| self.mixLst = open(trialFileName).read().splitlines()
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| self.list_length = len(self.mixLst)
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| random.shuffle(self.mixLst)
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|
|
| def load_single_audio(self, audio, fps, numFrames, audioAug=False, aug_audio=None):
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| if audioAug:
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| augType = random.randint(0, 1)
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| if augType == 1:
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| audio = overlap(audio, aug_audio)
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| else:
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| audio = audio
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|
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| res = vggish_input.waveform_to_examples(audio, 16000, numFrames, fps, return_tensor=False)
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| return res
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|
|
| def load_visual_label_mask(self, videoName, entityName, target_ts, context_ts, visualAug=True):
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|
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| faceFolderPath = os.path.join(self.visualPath, videoName, entityName)
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|
|
| faces = []
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| H = 112
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| if visualAug == True:
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| new = int(H * random.uniform(0.7, 1))
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| x, y = numpy.random.randint(0, H - new), numpy.random.randint(0, H - new)
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| M = cv2.getRotationMatrix2D((H / 2, H / 2), random.uniform(-15, 15), 1)
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| augType = random.choice(['orig', 'flip', 'crop', 'rotate'])
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| else:
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| augType = 'orig'
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| labels_dict = self.entity_data[videoName][entityName]
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| labels = numpy.zeros(len(target_ts))
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| mask = numpy.zeros(len(target_ts))
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|
|
| for i, time in enumerate(target_ts):
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| if time not in context_ts:
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| faces.append(numpy.zeros((H, H)))
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| else:
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| labels[i] = labels_dict[time]
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| mask[i] = 1
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| time = "%.2f" % float(time)
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| faceFile = os.path.join(faceFolderPath, str(time) + '.jpg')
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|
|
| face = cv2.imread(faceFile)
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|
|
| face = cv2.cvtColor(face, cv2.COLOR_BGR2GRAY)
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| face = cv2.resize(face, (H, H))
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| if augType == 'orig':
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| faces.append(face)
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| elif augType == 'flip':
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| faces.append(cv2.flip(face, 1))
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| elif augType == 'crop':
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| faces.append(cv2.resize(face[y:y + new, x:x + new], (H, H)))
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| elif augType == 'rotate':
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| faces.append(cv2.warpAffine(face, M, (H, H)))
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| faces = numpy.array(faces)
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| return faces, labels, mask
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|
|
| def get_speaker_context(self, videoName, target_entity, all_ts, center_ts):
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|
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| context_speakers = list(self.ts_to_entity[videoName][center_ts])
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| context = {}
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| chosen_speakers = []
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| context[target_entity] = all_ts
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| context_speakers.remove(target_entity)
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| num_frames = len(all_ts)
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| for candidate in context_speakers:
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| candidate_ts = self.entity_data[videoName][candidate]
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| shared_ts = set(all_ts).intersection(set(candidate_ts))
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| if (len(shared_ts) > (num_frames / 2)):
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| context[candidate] = shared_ts
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| chosen_speakers.append(candidate)
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| context_speakers = chosen_speakers
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| random.shuffle(context_speakers)
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| if not context_speakers:
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| context_speakers.insert(0, target_entity)
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| while len(context_speakers) < self.candidate_speakers:
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| context_speakers.append(random.choice(context_speakers))
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| elif len(context_speakers) < self.candidate_speakers:
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| context_speakers.insert(0, target_entity)
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| while len(context_speakers) < self.candidate_speakers:
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| context_speakers.append(random.choice(context_speakers[1:]))
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| else:
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| context_speakers.insert(0, target_entity)
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| context_speakers = context_speakers[:self.candidate_speakers]
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|
|
| assert set(context_speakers).issubset(set(list(context.keys()))), target_entity
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| assert target_entity in context_speakers, target_entity
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|
|
| return context_speakers, context
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|
|
| def __getitem__(self, index):
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|
|
| target_video = self.mixLst[index]
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| data = target_video.split('\t')
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| fps = float(data[2])
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| videoName = data[0][:11]
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| target_entity = data[0]
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| all_ts = list(self.entity_data[videoName][target_entity].keys())
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| numFrames = int(data[1])
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| assert numFrames == len(all_ts)
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|
|
| center_ts = all_ts[math.floor(numFrames / 2)]
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|
|
|
|
| context_speakers, context = self.get_speaker_context(videoName, target_entity, all_ts,
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| center_ts)
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|
|
| if self.cfg.TRAIN.AUDIO_AUG:
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| other_indices = list(range(0, index)) + list(range(index + 1, self.list_length))
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| augment_entity = self.mixLst[random.choice(other_indices)]
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| augment_data = augment_entity.split('\t')
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| augment_entity = augment_data[0]
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| augment_videoname = augment_data[0][:11]
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| aug_sr, aug_audio = wavfile.read(
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| os.path.join(self.audioPath, augment_videoname, augment_entity + '.wav'))
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| else:
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| aug_audio = None
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|
|
| audio_path = os.path.join(self.audioPath, videoName, target_entity + '.wav')
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| sr, audio = wavfile.read(os.path.join(self.audioPath, videoName, target_entity + '.wav'))
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| audio = self.load_single_audio(audio,
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| fps,
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| numFrames,
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| audioAug=self.cfg.TRAIN.AUDIO_AUG,
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| aug_audio=aug_audio)
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|
|
| visualFeatures, labels, masks = [], [], []
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|
|
|
|
| visual, target_labels, target_masks = self.load_visual_label_mask(
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| videoName, target_entity, all_ts, all_ts)
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|
|
| for idx, context_entity in enumerate(context_speakers):
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| if context_entity == target_entity:
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| label = target_labels
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| visualfeat = visual
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| mask = target_masks
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| else:
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| visualfeat, label, mask = self.load_visual_label_mask(videoName, context_entity,
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| all_ts,
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| context[context_entity])
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| visualFeatures.append(visualfeat)
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| labels.append(label)
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| masks.append(mask)
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|
|
| audio = torch.FloatTensor(audio)[None, :, :]
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| visualFeatures = torch.FloatTensor(numpy.array(visualFeatures))
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| audio_t = audio.shape[1]
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| video_t = visualFeatures.shape[1]
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| if audio_t != video_t * 4:
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| print(visualFeatures.shape, audio.shape, videoName, target_entity, numFrames)
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| labels = torch.LongTensor(numpy.array(labels))
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| masks = torch.LongTensor(numpy.array(masks))
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| print(audio.shape)
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| return audio, visualFeatures, labels, masks
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|
|
| def __len__(self):
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| return len(self.mixLst)
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|
|
|
|
| class val_loader(object):
|
|
|
| def __init__(self, cfg, trialFileName, audioPath, visualPath, num_speakers):
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| self.cfg = cfg
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| self.audioPath = audioPath
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| self.visualPath = visualPath
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| self.candidate_speakers = num_speakers
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| self.path = os.path.join(cfg.DATA.dataPathAVA, "csv")
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| self.entity_data = json.load(open(os.path.join(self.path, 'val_entity.json')))
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| self.ts_to_entity = json.load(open(os.path.join(self.path, 'val_ts.json')))
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| self.mixLst = open(trialFileName).read().splitlines()
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|
|
| def load_single_audio(self, audio, fps, numFrames, audioAug=False, aug_audio=None):
|
|
|
| res = vggish_input.waveform_to_examples(audio, 16000, numFrames, fps, return_tensor=False)
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| return res
|
|
|
| def load_visual_label_mask(self, videoName, entityName, target_ts, context_ts):
|
|
|
| faceFolderPath = os.path.join(self.visualPath, videoName, entityName)
|
|
|
| faces = []
|
| H = 112
|
| labels_dict = self.entity_data[videoName][entityName]
|
| labels = numpy.zeros(len(target_ts))
|
| mask = numpy.zeros(len(target_ts))
|
|
|
| for i, time in enumerate(target_ts):
|
| if time not in context_ts:
|
| faces.append(numpy.zeros((H, H)))
|
| else:
|
| labels[i] = labels_dict[time]
|
| mask[i] = 1
|
| time = "%.2f" % float(time)
|
| faceFile = os.path.join(faceFolderPath, str(time) + '.jpg')
|
|
|
| face = cv2.imread(faceFile)
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| face = cv2.cvtColor(face, cv2.COLOR_BGR2GRAY)
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| face = cv2.resize(face, (H, H))
|
| faces.append(face)
|
| faces = numpy.array(faces)
|
| return faces, labels, mask
|
|
|
| def get_speaker_context(self, videoName, target_entity, all_ts, center_ts):
|
|
|
| context_speakers = list(self.ts_to_entity[videoName][center_ts])
|
| context = {}
|
| chosen_speakers = []
|
| context[target_entity] = all_ts
|
| context_speakers.remove(target_entity)
|
| num_frames = len(all_ts)
|
| for candidate in context_speakers:
|
| candidate_ts = self.entity_data[videoName][candidate]
|
| shared_ts = set(all_ts).intersection(set(candidate_ts))
|
| context[candidate] = shared_ts
|
| chosen_speakers.append(candidate)
|
|
|
|
|
|
|
| context_speakers = chosen_speakers
|
| random.shuffle(context_speakers)
|
| if not context_speakers:
|
| context_speakers.insert(0, target_entity)
|
| while len(context_speakers) < self.candidate_speakers:
|
| context_speakers.append(random.choice(context_speakers))
|
| elif len(context_speakers) < self.candidate_speakers:
|
| context_speakers.insert(0, target_entity)
|
| while len(context_speakers) < self.candidate_speakers:
|
| context_speakers.append(random.choice(context_speakers[1:]))
|
| else:
|
| context_speakers.insert(0, target_entity)
|
| context_speakers = context_speakers[:self.candidate_speakers]
|
|
|
| assert set(context_speakers).issubset(set(list(context.keys()))), target_entity
|
|
|
| return context_speakers, context
|
|
|
| def __getitem__(self, index):
|
|
|
| target_video = self.mixLst[index]
|
| data = target_video.split('\t')
|
| fps = float(data[2])
|
| videoName = data[0][:11]
|
| target_entity = data[0]
|
| all_ts = list(self.entity_data[videoName][target_entity].keys())
|
| numFrames = int(data[1])
|
|
|
| assert numFrames == len(all_ts)
|
|
|
| center_ts = all_ts[math.floor(numFrames / 2)]
|
|
|
|
|
| context_speakers, context = self.get_speaker_context(videoName, target_entity, all_ts,
|
| center_ts)
|
|
|
| sr, audio = wavfile.read(os.path.join(self.audioPath, videoName, target_entity + '.wav'))
|
| audio = self.load_single_audio(audio, fps, numFrames, audioAug=False)
|
|
|
| visualFeatures, labels, masks = [], [], []
|
|
|
|
|
| target_visual, target_labels, target_masks = self.load_visual_label_mask(
|
| videoName, target_entity, all_ts, all_ts)
|
|
|
| for idx, context_entity in enumerate(context_speakers):
|
| if context_entity == target_entity:
|
| label = target_labels
|
| visualfeat = target_visual
|
| mask = target_masks
|
| else:
|
| visualfeat, label, mask = self.load_visual_label_mask(videoName, context_entity,
|
| all_ts,
|
| context[context_entity])
|
| visualFeatures.append(visualfeat)
|
| labels.append(label)
|
| masks.append(mask)
|
|
|
| audio = torch.FloatTensor(audio)[None, :, :]
|
| visualFeatures = torch.FloatTensor(numpy.array(visualFeatures))
|
| audio_t = audio.shape[1]
|
| video_t = visualFeatures.shape[1]
|
| if audio_t != video_t * 4:
|
| print(visualFeatures.shape, audio.shape, videoName, target_entity, numFrames)
|
| labels = torch.LongTensor(numpy.array(labels))
|
| masks = torch.LongTensor(numpy.array(masks))
|
|
|
| return audio, visualFeatures, labels, masks
|
|
|
| def __len__(self):
|
| return len(self.mixLst)
|
|
|