Spaces:
Running
on
Zero
Running
on
Zero
# Copyright (c) 2025 Ye Liu. Licensed under the BSD-3-Clause License. | |
import nncore | |
from videomind.dataset.hybrid import DATASETS | |
from videomind.dataset.wrappers import AnsweringCropDataset, AnsweringDataset, GroundingDataset | |
from videomind.utils.parser import parse_query, parse_question | |
class ReXTimeDataset(AnsweringDataset): | |
ANNO_PATH_TRAIN = 'data/rextime/rextime_train.json' | |
ANNO_PATH_VALID = 'data/rextime/rextime_val.json' | |
ANNO_PATH_TEST = 'data/rextime/rextime_test_release.json' | |
VIDEO_ROOT_ANET = 'data/activitynet/videos_3fps_480_noaudio' | |
VIDEO_ROOT_QVHL = 'data/qvhighlights/videos_3fps_480_noaudio' | |
DURATIONS_ANET = 'data/activitynet/durations.json' | |
DURATIONS_QVHL = 'data/qvhighlights/durations.json' | |
SOURCE = 'rextime' | |
DATA_TYPE = 'multimodal' | |
UNIT = 1.0 | |
MIN_LEN = 64 | |
def load_annos(self, split='train'): | |
if split == 'train': | |
raw_annos = nncore.load(self.ANNO_PATH_TRAIN) | |
elif split == 'valid': | |
raw_annos = nncore.load(self.ANNO_PATH_VALID) | |
else: | |
print('WARNING: Test split does not have ground truth annotations') | |
raw_annos = nncore.load(self.ANNO_PATH_TEST) | |
durations_anet = nncore.load(self.DURATIONS_ANET) | |
durations_qvhl = nncore.load(self.DURATIONS_QVHL) | |
annos = [] | |
for raw_anno in raw_annos: | |
vid = raw_anno['vid'] | |
if len(vid) == 13: | |
video_path = nncore.join(self.VIDEO_ROOT_ANET, vid + '.mp4') | |
duration = durations_anet[vid] | |
else: | |
video_path = nncore.join(self.VIDEO_ROOT_QVHL, vid + '.mp4') | |
duration = durations_qvhl[vid] | |
anno = dict( | |
source=self.SOURCE, | |
data_type=self.DATA_TYPE, | |
video_path=video_path, | |
duration=duration, | |
query=parse_query(raw_anno['question']), | |
question=parse_question(raw_anno['question']), | |
options=[o.capitalize() for o in raw_anno['options']], | |
answer=raw_anno['answer'].replace('From <s0> to <e0>, ', '').capitalize(), | |
ans=raw_anno['ans'], | |
span=[raw_anno['span']], | |
task=raw_anno['category']) | |
annos.append(anno) | |
return annos | |
class ReXTimeCropDataset(AnsweringCropDataset, ReXTimeDataset): | |
SOURCE = 'rextime_crop' | |
class ReXTimeGroundingDataset(GroundingDataset, ReXTimeDataset): | |
SOURCE = 'rextime_grounding' | |
DATA_TYPE = 'grounding' | |