##################### #Annotate in naive way ##################### import json import pickle import numpy as np # Error : somewhere [0,0,0] produced - SOLVED av_train_annotation_path = '/scratch/junhyeok/ego4d_dataset/v2/annotations/av_val.json' with open(av_train_annotation_path, "r") as f: av_train_annotations = json.load(f) av_train_processed = {} for video in av_train_annotations['videos'] : for clip in video['clips'] : uid = clip['clip_uid'] # Make embedding template end_frame = clip['clip_end_frame'] #feature_num = int(np.ceil(end_frame/6)) feature_num = int(np.round(end_frame/6)) if feature_num != 1500 : print('uid : {} , feature_length : {}'.format(uid , feature_num)) anno = np.zeros((feature_num , 3)) # Suppose no action in frame for default anno[:,0]=1 i=0 if clip['transcriptions'] == [] : continue else: av_train_processed[uid] = {} for transcript in clip['transcriptions']: # To make annotation by clip frame, need to subtract video_start_frame from transcription's start_frame if i==0 : initial_frame = clip['video_start_frame'] i+=1 #Save frame range start_frame = transcript['video_start_frame'] - initial_frame end_frame = transcript['video_end_frame'] - initial_frame #Save action encoding if int(transcript['person_id']) == 0 : encode_num = 1 if int(transcript['person_id']) >= 1 : encode_num = 2 if int(transcript['person_id']) == -1 : encode_num = 0 #Save encoding by feature if end_frame//6 - start_frame//6 == 0 : anno[(start_frame//6)-1 , 0] = 0 anno[(start_frame//6)-1 , encode_num]=1 else : anno[(start_frame//6)-1 : (end_frame//6) , 0] = 0 anno[(start_frame//6)-1 : (end_frame//6) , encode_num]=1 #Save annotation to uid list av_train_processed[uid]['anno'] = anno av_train_processed[uid]['feature_length'] = feature_num print('Processing DONE!') with open('val_perfeature_sample.pickle' , 'wb') as f : pickle.dump(av_train_processed , f) print('SAVED')