首页> 外文会议>Proceedings of 2009 IEEE international conference on network infrastructure and digital content >THE METHODS OF PERSONAL FEATURES SELECTION USING ACOGA AND GEOMETRIC EXTREMA CHARACTERISTICS FOR CHINESE ONLINE SIGNATURE VERIFICATION
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THE METHODS OF PERSONAL FEATURES SELECTION USING ACOGA AND GEOMETRIC EXTREMA CHARACTERISTICS FOR CHINESE ONLINE SIGNATURE VERIFICATION

机译:基于ACOGA和几何极值特征的个人特征选择方法用于中文在线签名验证

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This paper presents a new method to select a segment-to-segment matching by analysing signature verification, accordingly curve segments used in signature verification and the regional feature contained in the curve segment are pickedup and the regional features are selected by ant colony optimization (ACO) algorithm and genetic algorithms(GAs). Namely, features selected are first encoded into chromosome, and descendible types are founded by ACOGA improved locally. The essential advantages of ACO including cooperativity, obustness, positive feedback and distributed nature were discuss and also the disadvantages of low convergence speed while the high adaptability of GAs were discussed too. Meanwhile, cross operation and mutation of genetic algorithms were introduced into the ACO. A new crossover method is also proposed to determine the number of curve segments. The experiment shows that the algorithms proposed can accurately find optimal features for signature verification and bring the lower FRR and FAR, thereby the veracity in online signature verification is enhanced.
机译:本文提出了一种通过分析签名验证来选择段到段匹配的新方法,从而拾取签名验证中使用的曲线段和曲线段中包含的区域特征,并通过蚁群优化(ACO)选择区域特征)算法和遗传算法(GA)。即,首先将选择的特征编码到染色体中,然后通过ACOGA局部改进来建立可下降的类型。讨论了ACO的合作性,稳健性,正反馈和分布性等基本优点,还讨论了收敛速度低而GA适应性强的缺点。同时,交叉运算和遗传算法的变异被引入到ACO中。还提出了一种新的交叉方法来确定曲线段的数量。实验表明,所提出的算法可以准确地找到签名验证的最佳特征,并具有较低的FRR和FAR,从而提高了在线签名验证的准确性。

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