CAPTCHA字符识别视觉分割系统的仿生统一模型

Chi-Wei Lin, Yu-Han Chen, Liang-Gee Chen
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引用次数: 12

摘要

在本文中,我们提出了一个生物启发的统一模型来提高CAPTCHA(完全自动化的公共图灵测试,以区分计算机和人类)字符识别问题的识别精度。我们的研究重点是对不同的CAPTCHA字符进行分割,以显示视觉预处理在识别中的重要性。传统的字符识别系统对CAPTCHA字符的识别率较低,主要原因是背景噪声大,字符失真。我们模仿人类的视觉注意系统,让识别系统知道在噪音的情况下应该关注哪里。然后用OCR系统识别预处理后的字符。对于我们测试的CAPTHA字符,预处理后的总体识别率从16.63%提高到70.74%。从实验结果中,我们发现了预处理对字符识别的重要性。此外,通过模仿人类的视觉系统,可以建立一个更统一的模型。该模型是某一类视觉识别问题的实例,可以推广到更广泛的领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bio-inspired unified model of visual segmentation system for CAPTCHA character recognition
In this paper, we present a bio-inspired unified model to improve the recognition accuracy of character recognition problems for CAPTCHA (completely automated public turing test to tell computers and humans apart). Our study focused on segmenting different CAPTCHA characters to show the importance of visual preprocessing in recognition. Traditional character recognition systems show a low recognition rate for CAPTCHA characters due to their noisy backgrounds and distorted characters. We imitated the human visual attention system to let a recognition system know where to focus on despite the noise. The preprocessed characters were then recognized by an OCR system. For the CAPTHA characters we tested, the overall recognition rate increased from 16.63% to 70.74% after preprocessing. From our experimental results, we found out the importance of preprocessing for character recognition. Also, by imitating the human visual system, a more unified model can be built. The model presented is an instance for a certain type of visual recognition problem and can be generalized to cope with broader domains.
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