ICDAR 2019稳健阅读挑战赛:阅读标牌上的中文文字

Xi Liu, Rui Zhang, Yongsheng Zhou, Qianyi Jiang, Qi Song, Nan Li, Kai Zhou, Lei Wang, Dong Wang, Minghui Liao, Mingkun Yang, X. Bai, Baoguang Shi, Dimosthenis Karatzas, Shijian Lu, C. V. Jawahar
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引用次数: 82

摘要

中文场景文本读取是计算机视觉中最具挑战性的问题之一,引起了人们的广泛关注。与英文文字不同,中文有6000多个常用汉字,汉字可以排列成各种布局,字体繁多。街景中的中文招牌是一个很好的选择,因为它们有不同的背景,字体和布局。我们组织了一个名为ICDAR2019-ReCTS的比赛,主要是阅读广告牌上的中文文字。这份报告介绍了比赛的最终结果。发布了一个包含25000张标注广告牌图像的大规模数据集,其中所有的文本行和字符都标注了位置和转录。设置了字符识别、文本行识别、文本行检测和端到端识别四个任务。此外,考虑到中文文本歧义问题,我们提出了一种多基础真值(multi- gt)评价方法,使评价更加公平。比赛于2019年3月1日开始,2019年4月30日结束。共收到46支参赛队伍的262份参赛作品。大多数参与者来自中国的大学、研究机构和科技公司。还有一些来自美国、澳大利亚、新加坡和韩国的参与者。21个团队提交任务1的结果,23个团队提交任务2的结果,24个团队提交任务3的结果,13个团队提交任务4的结果。比赛的官方网站是http://rrc.cvc.uab.es/?ch=12。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ICDAR 2019 Robust Reading Challenge on Reading Chinese Text on Signboard
Chinese scene text reading is one of the most challenging problems in computer vision and has attracted great interest. Different from English text, Chinese has more than 6000 commonly used characters and Chinese characters can be arranged in various layouts with numerous fonts. The Chinese signboards in street view are a good choice for Chinese scene text images since they have different backgrounds, fonts and layouts. We organized a competition called ICDAR2019-ReCTS, which mainly focuses on reading Chinese text on signboard. This report presents the final results of the competition. A large-scale dataset of 25,000 annotated signboard images, in which all the text lines and characters are annotated with locations and transcriptions, were released. Four tasks, namely character recognition, text line recognition, text line detection and end-to-end recognition were set up. Besides, considering the Chinese text ambiguity issue, we proposed a multi ground truth (multi-GT) evaluation method to make evaluation fairer. The competition started on March 1, 2019 and ended on April 30, 2019. 262 submissions from 46 teams are received. Most of the participants come from universities, research institutes, and tech companies in China. There are also some participants from the United States, Australia, Singapore, and Korea. 21 teams submit results for Task 1, 23 teams submit results for Task 2, 24 teams submit results for Task 3, and 13 teams submit results for Task 4. The official website for the competition is http://rrc.cvc.uab.es/?ch=12.
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