使用两个分类器组合的在线签名验证

M. Saeidi, R. Amirfattahi, A. Amini, M. Sajadi
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引用次数: 6

摘要

签名验证的目的是鉴别签名的真伪。在线签名是通过数字化设备等电子设备进行注册,并以时间序列的形式存储在计算机上的签名。在这类签名中,除了存储位置信息外,还存储速度、加速度等时间信息。本文采用基于信号极值匹配算法和蚁群算法,在完成签名大小归一化、平滑和消除签名旋转等预处理程序后,使签名的持续时间相等。然后,将使用扩展回归确定签名之间的相似性,最后将尝试使用支持向量机(SVM)区分伪造签名和真实签名。在与首届国际签名验证大赛相关的SVC2004签名集上对建议的在线验证系统进行了测试,并将结果与参与者各自的结果进行了比较。结果表明,该方法在熟练伪造者组中显示出相同的误差率(EER)为%4.3。
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Online signature verification using combination of two classifiers
The objective of signature verification is to distinguish forgery signature from genuine one. Online signature is the one which is registered through electronic devices such as digitizers and stored on computers in time sequence form. In this kind of signatures in addition to location information, time information such as speed and acceleration is stored. In this paper after accomplishment of some pre-processing procedures like normalization of signature size, smoothing and elimination of rotation on signatures using algorithms based on extremum matching of signals and ant colony, their time duration will be equalized. Afterwards, similarities between signatures will be determined using extended regression and finally will try to distinguish between forgery signatures from genuine one using support vector machine (SVM). The suggested online verification system is tested on SVC2004 signature set which is related to the first international signature verification competition and results are compared to respective results of participants. The results state that suggested method exhibits equal error rate (EER) of %4.3 in skilled forger group.
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