A Multi-oriented Chinese Keyword Spotter Guided by Text Line Detection

Pei Xu, Shan Huang, Hongzhen Wang, Hao Song, Shen Huang, Qi Ju
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Abstract

Chinese keyword spotting is a challenging task as there is no visual blank for Chinese words. Different from English words which are split naturally by visual blanks, Chinese words are generally split only by semantic information. In this paper, we propose a new Chinese keyword spotter for natural images, which is inspired by Mask R-CNN. We propose to predict the keyword masks guided by text line detection. Firstly, proposals of text lines are generated by Faster R-CNN; Then, text line masks and keyword masks are predicted by segmentation in the proposals. In this way, the text lines and keywords are predicted in parallel. We create two Chinese keyword datasets based on RCTW-17 and ICPR MTWI2018 to verify the effectiveness of our method.
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基于文本行检测的多方向中文关键词定位器
中文关键词识别是一项具有挑战性的任务,因为中文单词没有视觉空白。不同于英语词汇是通过视觉空白自然分割的,汉语词汇一般只通过语义信息进行分割。在本文中,我们提出了一种新的自然图像中文关键词识别器,该识别器的灵感来自Mask R-CNN。我们建议通过文本行检测来预测关键字掩码。首先,使用Faster R-CNN生成文本行建议;然后,对文本行掩码和关键字掩码进行分割预测。通过这种方式,文本行和关键字被并行预测。我们基于RCTW-17和ICPR MTWI2018创建了两个中文关键字数据集来验证我们方法的有效性。
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