import json from collections import defaultdict def transform_ovo_to_movienet_format(input_file, output_file): """ 将 ovo_bench_new.json 转换为类似 movienet_oe.json 的格式 规则: 1. 按 video 分组,将同一视频的问答合并到 conversations 列表 2. 过滤掉 task 为 "REC", "SSR", "CRR" 的样本 3. 保留每个样本的其他 keys """ # 读取原始数据 with open(input_file, 'r', encoding='utf-8') as f: data = json.load(f) # 过滤掉指定的 task 类型 filtered_data = [ item for item in data if item.get('task') not in ['REC', 'SSR', 'CRR'] ] print(f"原始样本数: {len(data)}") print(f"过滤后样本数: {len(filtered_data)}") new_data = [] for sample_dict in filtered_data: new_dict = {} new_dict['video_id'] = sample_dict['id'] new_dict['video_path'] = 'data/ovobench/videos/' + sample_dict['video'] new_dict['task'] = sample_dict['task'] new_dict['conversations'] = [] conv = { "question": sample_dict['question'], "answer": sample_dict['options'][sample_dict['gt']], "choices": sample_dict['options'], "end_time": sample_dict['realtime'], } new_dict['conversations'].append(conv) new_data.append(new_dict) with open(output_file, 'w', encoding='utf-8') as f: json.dump(new_data, f, ensure_ascii=False, indent=4) if __name__ == "__main__": input_file = "ovo_bench_new.json" output_file = "ovobench_formatted.json" transform_ovo_to_movienet_format(input_file, output_file)