Datasets:
metadata
license: apache-2.0
task_categories:
- summarization
language:
- en
tags:
- cross-modal-video-summarization
- video-summarization
- video-captioning
pretty_name: VideoXum
size_categories:
- 10K<n<100K
Dataset Card for VideoXum
Table of Contents
Dataset Description
- Homepage: https://videoxum.github.io/
- Paper: https://arxiv.org/abs/2303.12060
Dataset Summary
The VideoXum dataset represents a novel task in the field of video summarization, extending the scope from single-modal to cross-modal video summarization. This new task focuses on creating video summaries that containing both visual and textual elements with semantic coherence. Built upon the foundation of ActivityNet Captions, VideoXum is a large-scale dataset, including over 14,000 long-duration and open-domain videos. Each video is paired with 10 corresponding video summaries, amounting to a total of 140,000 video-text summary pairs.
Languages
The textual summarization in the dataset are in English.
Dataset Structure
Dataset Splits
train | validation | test | Overall | |
---|---|---|---|---|
# of videos | 8,000 | 2,001 | 4,000 | 14,001 |
Dataset Resources
train_videoxum.json
: annotations of training setval_videoxum.json
: annotations of validation settest_videoxum.json
: annotations of test set
Dataset Fields
video_id
:str
a unique identifier for the video.duration
:float
total duration of the video in seconds.sampled_frames
:int
the number of frames sampled from source video at 1 fps with a uniform sampling schema.timestamps
:List_float
a list of timestamp pairs, with each pair representing the start and end times of a segment within the video.tsum
:List_str
each textual video summary provides a summarization of the corresponding video segment as defined by the timestamps.vsum
:List_float
each visual video summary corresponds to key frames within each video segment as defined by the timestamps. The dimensions (3 x 10) suggest that each video segment was reannotated by 10 different workers.vsum_onehot
:List_bool
one-hot matrix transformed from 'vsum'. The dimensions (10 x 83) denotes the one-hot labels spanning the entire length of a video, as annotated by 10 workers.
Annotation Sample
For each video, We hire workers to annotate ten shortened video summaries.
{
'video_id': 'v_QOlSCBRmfWY',
'duration': 82.73,
'sampled_frames': 83
'timestamps': [[0.83, 19.86], [17.37, 60.81], [56.26, 79.42]],
'tsum': ['A young woman is seen standing in a room and leads into her dancing.',
'The girl dances around the room while the camera captures her movements.',
'She continues dancing around the room and ends by laying on the floor.'],
'vsum': [[[ 7.01, 12.37], ...],
[[41.05, 45.04], ...],
[[65.74, 69.28], ...]] (3 x 10 dim)
'vsum_onehot': [[[0,0,0,...,1,1,...], ...],
[[0,0,0,...,1,1,...], ...],
[[0,0,0,...,1,1,...], ...],] (10 x 83 dim)
}
Citation
@article{lin2023videoxum,
author = {Lin, Jingyang and Hua, Hang and Chen, Ming and Li, Yikang and Hsiao, Jenhao and Ho, Chiuman and Luo, Jiebo},
title = {VideoXum: Cross-modal Visual and Textural Summarization of Videos},
journal = {IEEE Transactions on Multimedia},
year = {2023},
}