# Copyright (c) OpenMMLab. All rights reserved. """This file processes the annotation files and generates proper annotation files for localizers.""" import json import numpy as np def load_json(file): with open(file) as json_file: data = json.load(json_file) return data data_file = '../../../data/ActivityNet' info_file = f'{data_file}/video_info_new.csv' ann_file = f'{data_file}/anet_anno_action.json' anno_database = load_json(ann_file) video_record = np.loadtxt(info_file, dtype=str, delimiter=',', skiprows=1) video_dict_train = {} video_dict_val = {} video_dict_test = {} video_dict_full = {} for _, video_item in enumerate(video_record): video_name = video_item[0] video_info = anno_database[video_name] video_subset = video_item[5] video_info['fps'] = video_item[3].astype(np.float64) video_info['rfps'] = video_item[4].astype(np.float64) video_dict_full[video_name] = video_info if video_subset == 'training': video_dict_train[video_name] = video_info elif video_subset == 'testing': video_dict_test[video_name] = video_info elif video_subset == 'validation': video_dict_val[video_name] = video_info print(f'full subset video numbers: {len(video_record)}') with open(f'{data_file}/anet_anno_train.json', 'w') as result_file: json.dump(video_dict_train, result_file) with open(f'{data_file}/anet_anno_val.json', 'w') as result_file: json.dump(video_dict_val, result_file) with open(f'{data_file}/anet_anno_test.json', 'w') as result_file: json.dump(video_dict_test, result_file) with open(f'{data_file}/anet_anno_full.json', 'w') as result_file: json.dump(video_dict_full, result_file)