A Bilingual, OpenWorld Video Text Dataset and End-to-end Video Text Spotter with Transformer

Autor: Wu, Weijia, Cai, Yuanqiang, Zhang, Debing, Wang, Sibo, Li, Zhuang, Li, Jiahong, Tang, Yejun, Zhou, Hong
Rok vydání: 2021
Předmět:
Zdroj: NeurIPS 2021 Track on Datasets and Benchmarks
Druh dokumentu: Working Paper
Popis: Most existing video text spotting benchmarks focus on evaluating a single language and scenario with limited data. In this work, we introduce a large-scale, Bilingual, Open World Video text benchmark dataset(BOVText). There are four features for BOVText. Firstly, we provide 2,000+ videos with more than 1,750,000+ frames, 25 times larger than the existing largest dataset with incidental text in videos. Secondly, our dataset covers 30+ open categories with a wide selection of various scenarios, e.g., Life Vlog, Driving, Movie, etc. Thirdly, abundant text types annotation (i.e., title, caption or scene text) are provided for the different representational meanings in video. Fourthly, the BOVText provides bilingual text annotation to promote multiple cultures live and communication. Besides, we propose an end-to-end video text spotting framework with Transformer, termed TransVTSpotter, which solves the multi-orient text spotting in video with a simple, but efficient attention-based query-key mechanism. It applies object features from the previous frame as a tracking query for the current frame and introduces a rotation angle prediction to fit the multiorient text instance. On ICDAR2015(video), TransVTSpotter achieves the state-of-the-art performance with 44.1% MOTA, 9 fps. The dataset and code of TransVTSpotter can be found at github:com=weijiawu=BOVText and github:com=weijiawu=TransVTSpotter, respectively.
Comment: 20 pages, 6 figures
Databáze: arXiv