Distribution of local curvature values as a structural feature for off-line handwritten signature verification

V. V. Starovoitov, U. Akhundjanov
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Abstract

In the paper, a new feature for describing a digital image of a handwritten signature based on the frequency distribution of the values of the local curvature of the signature contours, is proposed. The calculation of this feature on the binary image of a signature is described in detail. A normalized histogram of distributions of local curvature values for 40 bins is formed. The frequency values recorded as a 40-dimensional vector are called the local curvature code of the signature. During verification, the proximity of signature pairs is determined by correlation between curvature codes and LBP codes described by the authors in [23]. To perform the signature verification procedure, a two-dimensional feature space is constructed containing images of the proximity of signature pairs. When verifying a signature with N authentic signatures of the same person, N(N-1)/2 patterns of the proximity of pairs of genuine signatures and N images of pairs of proximity of the analyzed signature with genuine signatures are presented in the feature space. The Support Vector Machine (SVM) is used as a classifier. Experimental studies were carried out on digitized images of genuine and fake signatures from two databases. The accuracy of automatic verification of signatures on the publicly available CEDAR database was 99,77 % and on TUIT was 88,62 %.
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局部曲率值的分布作为离线手写签名验证的结构特征
本文提出了一种基于签名轮廓局部曲率值的频率分布来描述手写签名数字图像的新特征。详细描述了该特征在签名二值图像上的计算。形成了40个箱的局部曲率值分布的规范化直方图。记录为40维矢量的频率值称为签名的局部曲率码。在验证过程中,通过曲率码与作者在[23]中描述的LBP码之间的相关性来确定签名对的接近性。为了执行签名验证过程,构造了一个包含签名对接近度图像的二维特征空间。当对同一个人的N个真实签名进行验证时,特征空间中存在N(N-1)/2个真实签名对的接近模式和N个被分析签名与真实签名的接近对的图像。使用支持向量机(SVM)作为分类器。对两个数据库中真伪签名的数字化图像进行了实验研究。在公开可用的CEDAR数据库上签名自动验证的准确率为99.77%,在TUIT数据库上签名自动验证的准确率为88.62%。
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审稿时长
8 weeks
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