一种基于多阶段分类和小波核生成的手写马拉地语复合字识别方法

S. Shelke, S. Apte
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引用次数: 16

摘要

提出了一种无约束手写马拉地语复合字识别的新方法。采用多阶段特征提取和分类方案进行识别。特征提取的初始阶段是基于结构特征,并根据其参数对字符进行分类。特征提取的最后阶段采用小波变换生成核。采用单级小波分解生成近似系数。这些系数被存储为核,以便进行匹配。实现了一种改进的小波核生成方法。在这两种情况下,识别都是通过模板匹配完成的。对于不同的调整大小因素,使用两种核生成技术对结果进行了分析。该方法对基于小波核的16×16和32×32调整因子的识别率分别为95.89%和96.00%,对基于改进小波核的16×16和32×32调整因子的识别率分别为96.41%和97.94%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel multistage classification and Wavelet based kernel generation for handwritten Marathi compound character recognition
This paper presents a novel approach for recognition of unconstrained handwritten Marathi compound characters. The recognition is carried out using multistage feature extraction and classification scheme. The initial stages of feature extraction are based upon the structural features and the classification of the characters is done according to their parameters. The final stage of feature extraction employs generation of kernels using Wavelet transform. A single level Wavelet decomposition is used to generate the approximation coefficients. These coefficients are stored as kernels for matching. A modified wavelet based kernel generation method is also implemented. The recognition is done by template matching in both the cases. The results are analyzed using both the kernel generation techniques for varying resize factors. The recognition rate achieved from the proposed method is 95.89% and 96.00% for 16×16 and 32×32 resize factors respectively with wavelet based kernels and 96.41% and 97.94% for 16×16 and 32×32 resize factors respectively with modified wavelet based kernels.
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