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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Radical analysis network for learning hierarchies of Chinese characters
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Radical analysis network for learning hierarchies of Chinese characters

机译:用于学习汉字学习层次结构的激进分析网络

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摘要

Chinese characters have a valuable property, this is, numerous Chinese characters are composed of a compact set of fundamental and structural radicals. This paper introduces a radical analysis network (RAN) that makes full use of this valuable property to implement radical-based Chinese character recognition. The proposed RAN employs an attention mechanism to extract radicals from Chinese characters and to detect spatial structures among the radicals. Then, the decoder in RAN generates a hierarchical composition of Chinese characters based on the knowledge of the extracted radicals and their internal structures. The method of treating a Chinese character as a composition of radicals rather than as a single character category is a human-like method that can reduce the size of the vocabulary, ignore redundant information among similar characters and enable the system to recognize unseen Chinese character categories, i.e., zero-shot learning. Through experiments, we assess the practicality of RAN for recognizing Chinese characters in natural scenes. Furthermore, a RAN framework can be proposed for scene text recognition with the extension of a dense recurrent neural network (denseRNN) encoder, a multihead coverage attention model and HSV representations. The proposed approach achieved the best performance in the ICPR MTWI 2018 competition. (C) 2020 Elsevier Ltd. All rights reserved.
机译:汉字有一个有价值的财产,这是众多汉字由一组紧凑的基本和结构基础组成。本文介绍了一种激进的分析网络(RAN),充分利用了这种有价值的财产来实现基于激进的汉字识别。拟议的持续采用注意机制,以从汉字中提取自由基并检测自由基之间的空间结构。然后,RAN中的解码器基于提取的自由基及其内部结构的知识生成汉字的分层组成。将汉字作为激进的组成而不是单一字符类别的方法是一种人类的方法,可以减少词汇量的大小,忽略类似字符之间的冗余信息,使系统能够识别不均人的汉字类别,即零射击学习。通过实验,我们评估ran在自然场景中识别汉字的实用性。此外,可以提出与扩展密集的经常性神经网络(Densernn)编码器,多口覆盖注意力模型和HSV表示的场景文本识别。拟议的方法在ICPR MTWI 2018年竞争中取得了最佳表现。 (c)2020 elestvier有限公司保留所有权利。

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