基于网格特征和小波矩的工业字符识别

Yong Zhang, Sanxia Xie, Shulin Wei
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引用次数: 4

摘要

利用融合特征和多层次分类,提出了一种新的激光打印字符识别描述符。特征提取模块中有两级特征,第一级特征采用粗网格统计特征,对局部字符失真和笔画粗细不等具有很强的适用性;小波矩作为二级特征,具有尺度不变性、平移不变性和旋转不变性,抗噪声能力强。它能同时反映整体字符和局部细节信息的近似值,适用于相似字符的分类。在分类模块中,在第一次特征模板匹配分类结果的基础上,第二次匹配使用二级特征融合和特殊失真字符模板对结果中排名前三的字符进行分类。实验结果表明,利用融合特征和多级分类,工业激光字符识别率可达99.2%,优于单级特征识别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Industrial character recognition based on grid feature and wavelet moment
A novel descriptor for laser printing character recognition is proposed by using the fusion features and multilevel classification. There are two level features in the feature extraction module, the first level feature uses the coarse grid statistical features, having great applicability for local character distortion and stroke thickness inequality. Wavelet moment, as the second level feature, has the scale, translation and rotation invariance and the great anti-noise capability. It can reflect the approximation of the overall character and local detail information at the same time, so it is suitable for classing similar characters. As for the classification module, based on results of primary feature template matching classification in the first place, the second matching uses two level features fusion and special distortion character template to classify the top three character in the results. Experimental results demonstrate that using the fusion features and multilevel classification, industrial laser character recognition rate can be up to 99.2%, which is better than that of using single stage feature recognition.
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