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convert_vcoco_annotations.py
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convert_vcoco_annotations.py
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# ------------------------------------------------------------------------
# Copyright (c) Hitachi, Ltd. All Rights Reserved.
# Licensed under the Apache License, Version 2.0 [see LICENSE for details]
# ------------------------------------------------------------------------
import argparse
import numpy as np
from collections import defaultdict
import json
import pickle
import os
import vsrl_utils as vu
def get_args():
parser = argparse.ArgumentParser()
parser.add_argument(
'--load_path', type=str, required=True,
)
parser.add_argument(
'--prior_path', type=str, required=True,
)
parser.add_argument(
'--save_path', type=str, required=True,
)
args = parser.parse_args()
return args
def set_hoi(box_annotations, hoi_annotations, verb_classes):
no_object_id = -1
hoia_annotations = defaultdict(lambda: {
'annotations': [],
'hoi_annotation': []
})
for action_annotation in hoi_annotations:
for label, img_id, role_ids in zip(action_annotation['label'][:, 0],
action_annotation['image_id'][:, 0],
action_annotation['role_object_id']):
hoia_annotations[img_id]['file_name'] = box_annotations[img_id]['file_name']
hoia_annotations[img_id]['annotations'] = box_annotations[img_id]['annotations']
if label == 0:
continue
subject_id = box_annotations[img_id]['annotation_ids'].index(role_ids[0])
if len(role_ids) == 1:
hoia_annotations[img_id]['hoi_annotation'].append(
{'subject_id': subject_id, 'object_id': no_object_id,
'category_id': verb_classes.index(action_annotation['action_name'])})
continue
for role_name, role_id in zip(action_annotation['role_name'][1:], role_ids[1:]):
if role_id == 0:
object_id = no_object_id
else:
object_id = box_annotations[img_id]['annotation_ids'].index(role_id)
hoia_annotations[img_id]['hoi_annotation'].append(
{'subject_id': subject_id, 'object_id': object_id,
'category_id': verb_classes.index('{}_{}'.format(action_annotation['action_name'], role_name))})
hoia_annotations = [v for v in hoia_annotations.values()]
return hoia_annotations
def main(args):
vsgnet_verbs_classes = {
'carry_obj': 0,
'catch_obj': 1,
'cut_instr':2,
'cut_obj': 3,
'drink_instr': 4,
'eat_instr':5,
'eat_obj': 6,
'hit_instr':7,
'hit_obj': 8,
'hold_obj': 9,
'jump_instr': 10,
'kick_obj': 11,
'lay_instr': 12,
'look_obj': 13,
'point_instr': 14,
'read_obj': 15,
'ride_instr': 16,
'run': 17,
'sit_instr': 18,
'skateboard_instr': 19,
'ski_instr': 20,
'smile': 21,
'snowboard_instr': 22,
'stand': 23,
'surf_instr': 24,
'talk_on_phone_instr': 25,
'throw_obj': 26,
'walk': 27,
'work_on_computer_instr': 28
}
box_annotations = defaultdict(lambda: {
'annotations': [],
'annotation_ids': []
})
coco = vu.load_coco(args.load_path)
img_ids = coco.getImgIds()
img_infos = coco.loadImgs(img_ids)
for img_info in img_infos:
box_annotations[img_info['id']]['file_name'] = img_info['file_name']
annotation_ids = coco.getAnnIds(imgIds=img_ids)
annotations = coco.loadAnns(annotation_ids)
for annotation in annotations:
img_id = annotation['image_id']
category_id = annotation['category_id']
box = np.array(annotation['bbox'])
box[2:] += box[:2]
box_annotations[img_id]['annotations'].append({'category_id': category_id, 'bbox': box.tolist()})
box_annotations[img_id]['annotation_ids'].append(annotation['id'])
hoi_trainval = vu.load_vcoco('vcoco_trainval')
hoi_test = vu.load_vcoco('vcoco_test')
action_classes = [x['action_name'] for x in hoi_trainval]
verb_classes = []
for action in hoi_trainval:
if len(action['role_name']) == 1:
verb_classes.append(action['action_name'])
else:
verb_classes += ['{}_{}'.format(action['action_name'], r) for r in action['role_name'][1:]]
print('Verb class')
for i, verb_class in enumerate(verb_classes):
print('{:02d}: {}'.format(i, verb_class))
hoia_trainval_annotations = set_hoi(box_annotations, hoi_trainval, verb_classes)
hoia_test_annotations = set_hoi(box_annotations, hoi_test, verb_classes)
print('#Training images: {}, #Test images: {}'.format(len(hoia_trainval_annotations), len(hoia_test_annotations)))
with open(os.path.join(args.save_path, 'trainval_vcoco.json'), 'w') as f:
json.dump(hoia_trainval_annotations, f)
with open(os.path.join(args.save_path, 'test_vcoco.json'), 'w') as f:
json.dump(hoia_test_annotations, f)
with open(args.prior_path, 'rb') as f:
prior = pickle.load(f)
prior = [prior[k] for k in sorted(prior.keys())]
prior = np.concatenate(prior).T
prior = prior[[vsgnet_verbs_classes[verb_class] for verb_class in verb_classes]]
np.save(os.path.join(args.save_path, 'corre_vcoco.npy'), prior)
if __name__ == '__main__':
args = get_args()
main(args)