# encoding: utf-8 # a = input("please input a number:") import pdb import torch import json import pdb vigil = json.load(open('/mnt/petrelfs/wangzehan/LLaVA-Next-3D/data/processed/intent3d_id_v3_val_llava_style.json', 'r')) # vigil = json.load(open('/mnt/petrelfs/wangzehan/LLaVA-Next-3D/data/processed/vigil3d_scannet_id_v2_val_llava.json', 'r')) scanrefer = json.load(open('/mnt/petrelfs/wangzehan/LLaVA-Next-3D/data/processed/scanrefer_vg_val_llava_style.json', 'r')) box_info = json.load(open('/mnt/petrelfs/wangzehan/LLaVA-Next-3D/data/metadata/scannet_val_gt_box.json', 'r')) num_id = 0 vigil_val = [] for vigil_item in vigil: obj_ids = vigil_item['metadata']['object_id'] if len(obj_ids) == 0: box = [] else: box = [box_info[vigil_item['video']][int(obj_id)] for obj_id in obj_ids] desc = vigil_item['conversations'][0]['value'].split('\n')[1] new_item = {"id": num_id, "video": vigil_item['video'], "conversations": [ {"value": f"Identify the object according to the following description.\n{desc}", "from": "human"}, {"value": "", "from": "gpt"}], "box": box, "metadata": {"dataset": "vigil", "question_type": "multiple", "ann_id": num_id, "object_id": obj_ids}} vigil_val.append(new_item) num_id += 1 with open('/mnt/petrelfs/wangzehan/LLaVA-Next-3D/extra_data/Other_VG/intent3d_full_vg_val_llava_style.json', 'w') as f: json.dump(vigil_val, f, indent=4)