Constructing a high performance signature verification system using a GA method

Xuhua Yang, T. Furuhashi, K. Obata, Y. Uchikawa
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引用次数: 27

Abstract

To realize a high-peformance automatic signature verification system, it is necessary that the selected features are potentially difficult to imitate. One of the advantages of online signature verification is that the virtual strokes which are left in the pen-up situation can be obtained. These virtual strokes can be memorized by the computer but are invisible to humans. So there is little possibility of imitating these strokes deliberately. The features included in such strokes are expected to realize a high verification performance. This paper proposes to find the optimal features for signature verification from these virtual strokes by using a genetic algorithm (GA). Experiments are carried out to show the effectiveness of the new method.
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利用遗传算法构建高性能签名验证系统
为了实现高性能的自动签名验证系统,所选择的特征必须具有潜在的难以模仿性。在线签名验证的优点之一是可以获得在笔画状态下留下的虚拟笔画。这些虚拟的笔划可以被计算机记住,但人类是看不见的。所以刻意模仿这些笔画的可能性很小。这些笔画中包含的特性有望实现高的验证性能。本文提出了利用遗传算法从这些虚拟笔画中寻找签名验证的最优特征。实验结果表明了该方法的有效性。
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