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CREATE: A Benchmark for Chinese Short Video Retrieval and Title Generation

Authors :
Zhang, Ziqi
Chen, Yuxin
Ma, Zongyang
Qi, Zhongang
Yuan, Chunfeng
Li, Bing
Shan, Ying
Hu, Weiming
Zhang, Ziqi
Chen, Yuxin
Ma, Zongyang
Qi, Zhongang
Yuan, Chunfeng
Li, Bing
Shan, Ying
Hu, Weiming
Publication Year :
2022

Abstract

Previous works of video captioning aim to objectively describe the video's actual content, which lacks subjective and attractive expression, limiting its practical application scenarios. Video titling is intended to achieve this goal, but there is a lack of a proper benchmark. In this paper, we propose to CREATE, the first large-scale Chinese shoRt vidEo retrievAl and Title gEneration benchmark, to facilitate research and application in video titling and video retrieval in Chinese. CREATE consists of a high-quality labeled 210K dataset and two large-scale 3M/10M pre-training datasets, covering 51 categories, 50K+ tags, 537K manually annotated titles and captions, and 10M+ short videos. Based on CREATE, we propose a novel model ALWIG which combines video retrieval and video titling tasks to achieve the purpose of multi-modal ALignment WIth Generation with the help of video tags and a GPT pre-trained model. CREATE opens new directions for facilitating future research and applications on video titling and video retrieval in the field of Chinese short videos.

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1333761062
Document Type :
Electronic Resource