结合神经网络的阿拉伯手写识别

Chergui Leila, Kef Maâmar, C. Salim
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引用次数: 16

摘要

组合分类器是一种在许多场合被证明是有用的方法,当努力进一步改进单个分类器的性能时。本文提出了一种用于阿拉伯文手写识别的离线多分类器系统(MCS)。MCS结合了两种独立的识别系统,分别基于模糊ART网络和径向基函数。我们使用了基于Hu和Zernike不变矩的各种特征集。为了得到最终决策,采用了不同的组合方案。最佳组合集合的识别率为91.1%,显著高于最佳个体分类器的84.31%。为了证明该分类系统的高性能,将结果与使用IFN/ENIT数据库的三个研究进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Combining neural networks for Arabic handwriting recognition
Combining classifiers is an approach that has been shown to be useful on numerous occasions when striving for further improvement over the performance of individual classifiers. In this paper we present an off-line Multiple Classifier System (MCS) for Arabic handwriting recognition. The MCS combine two individual recognition systems based on Fuzzy ART network used for the first time in Arabic OCR, and Radial Basis Functions. We use various feature sets based on Hu and Zernike Invariant moments. For deriving the final decision, different combining schemes are applied. The best combination ensemble has a recognition rate of 90,1 %, which is significantly higher than the 84,31% achieved by the best individual classifier. To demonstrate the high performance of the classification system, the results are compared with three research using IFN/ENIT database.
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