Isolated Handwritten Digit Recognition Using oBIFs and Background Features

A. Gattal, Chawki Djeddi, Y. Chibani, I. Siddiqi
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引用次数: 28

Abstract

This study demonstrates how the combination of oriented Basic Image Features (oBIFs) with the background concavity features can be effectively employed to enhance the performance of isolated digit recognition systems. The features are extracted without any size normalization from the complete image as well as from different regions of the image by applying a uniform grid sampling to the image. Classification is carried out using one-against-all support vector machine (SVM) while the experimental study is conducted on the standard CVL single digit database. A series of evaluations using different feature configurations and combinations realized high recognition rates which are compared with the state-of-the-art methods on this subject.
使用obif和背景特征的孤立手写数字识别
本研究证明了定向基本图像特征(obif)与背景凹凸性特征的结合可以有效地提高孤立数字识别系统的性能。通过对图像进行均匀网格采样,在不进行尺寸归一化的情况下,从完整的图像中提取特征,并从图像的不同区域提取特征。采用单对全支持向量机进行分类,并在标准CVL个位数数据库上进行实验研究。采用不同特征配置和组合的一系列评估实现了较高的识别率,并与当前的方法进行了比较。
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