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首页> 外文期刊>International Journal on Document Analysis and Recognition >Handwritten Hangul recognition using deep convolutional neural networks
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Handwritten Hangul recognition using deep convolutional neural networks

机译:使用深度卷积神经网络的手写韩文识别

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摘要

In spite of the advances in recognition technology, handwritten Hangul recognition (HHR) remains largely unsolved due to the presence of many confusing characters and excessive cursiveness in Hangul handwritings. Even the best existing recognizers do not lead to satisfactory performance for practical applications and have much lower performance than those developed for Chinese or alphanumeric characters. To improve the performance of HHR, here we developed a new type of recognizers based on deep neural networks (DNNs). DNN has recently shown excellent performance in many pattern recognition and machine learning problems, but have not been attempted for HHR. We built our Hangul recognizers based on deep convolutional neural networks and proposed several novel techniques to improve the performance and training speed of the networks. We systematically evaluated the performance of our recognizers on two public Hangul image databases, SERI95a and PE92. Using our framework, we achieved a recognition rate of 95.96 % on SERI95a and 92.92 % on PE92. Compared with the previous best records of 93.71 % on SERI95a and 87.70% on PE92, our results yielded improvements of 2.25 and 5.22 %, respectively. These improvements lead to error reduction rates of 35.71 % on SERI95a and 42.44% on PE92, relative to the previous lowest error rates. Such improvement fills a significant portion of the large gap between practical requirement and the actual performance of Hangul recognizers.
机译:尽管在识别技术方面取得了进步,但是由于在韩文手写物中存在许多令人困惑的字符和过度草书,手写韩文识别(HHR)仍未得到解决。即使是最好的现有识别器,也无法在实际应用中获得令人满意的性能,并且其性能远低于针对中文或字母数字字符开发的性能。为了提高HHR的性能,这里我们开发了一种基于深度神经网络(DNN)的新型识别器。 DNN最近在许多模式识别和机器学习问题中表现出出色的性能,但是尚未尝试用于HHR。我们基于深度卷积神经网络构建了我们的韩文识别器,并提出了几种新颖的技术来提高网络的性能和训练速度。我们在两个公共韩文图像数据库SERI95a和PE92上系统地评估了识别器的性能。使用我们的框架,我们在SERI95a上达到了95.96%的识别率,在PE92上达到了92.92%的识别率。与之前SERI95a和PE92的最佳记录分别为93.71%和87.70%相比,我们的结果分别提高了2.25%和5.22%。这些改进导致SERI95a的错误减少率达到35.71%,PE92的错误减少率达到42.44%,相对于之前的最低错误率。这种改进弥补了实际需求和韩文识别器实际性能之间巨大差距的很大一部分。

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