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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Building compact MQDF classifier for large character set recognition by subspace distribution sharing
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Building compact MQDF classifier for large character set recognition by subspace distribution sharing

机译:构建紧凑的MQDF分类器以通过子空间分布共享识别大型字符集

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摘要

Quadratic classifier with modified quadratic discriminant function (MQDF) has been successfully applied to recognition of handwritten characters to achieve very good performance. However, for large category classification problem such as Chinese character recognition, the storage of the parameters for the MQDF classifier is usually too large to make it practical to be embedded in the memory limited hand-held devices. In this paper, we aim at building a compact and high accuracy MQDF classifier for these embedded systems. A method by combining linear discriminant analysis and subspace distribution sharing is proposed to greatly compress the storage of the MQDF classifier from 76.4 to 2.06 MB, while the recognition accuracy still remains above 97%, with only 0.88% accuracy loss. Furthermore, a two-level minimum distance classifier is employed to accelerate the recognition process. Fast recognition speed and compact dictionary size make the high accuracy quadratic classifier become practical for hand-held devices. (c) 2008 Elsevier Ltd. All rights reserved.
机译:具有改进的二次判别函数(MQDF)的二次分类器已成功应用于手写字符的识别,以实现非常好的性能。但是,对于诸如汉字识别之类的大类别分类问题,MQDF分类器的参数存储通常太大,以致于无法嵌入到内存有限的手持设备中。在本文中,我们旨在为这些嵌入式系统构建一个紧凑且高精度的MQDF分类器。提出了一种结合线性判别分析和子空间分布共享的方法,将MQDF分类器的存储量从76.4 MB大大压缩到2.06 MB,而识别精度仍然保持在97%以上,而精度损失仅为0.88%。此外,采用了两级最小距离分类器来加速识别过程。快速的识别速度和紧凑的字典大小使高精度二次分类器成为手持设备的实用工具。 (c)2008 Elsevier Ltd.保留所有权利。

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