动态签名验证系统使用基于笔画的特征

Tong Qu, A. E. Saddik, Andy Adler
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引用次数: 17

摘要

提出了一种基于特征的动态签名验证系统。使用Windows Pen API,从爱国者数字pad获取数据。结合信号的空间和时域特征,对信号进行动态分析。研究了一种基于笔画的特征提取方法,该方法采用零压力点分隔笔画。在每对签名之间,对笔画进行相关性比较。通过与参考签名的最大相关性来区分重要笔划。提取重要笔画的相关值和笔画长度作为识别真伪签名的特征。根据所选特征的概率分布对隶属函数和分类器进行建模。对20名志愿者的签名进行了实验。计算出当前基于6个特征的签名验证系统的错误接受率为1.67%,错误拒绝率为6.67%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic signature verification system using stroked based features
This paper presents a novel feature-based dynamic signature verification system. Data is acquired from a Patriot digital pad, using the Windows Pen API. The signatures are analyzed dynamically by considering their spatial and time domain characteristics. A stroke-based feature extraction method is studied, in which strokes are separated by the zero pressure points. Between each pair of signatures, the correlation comparisons are conducted for strokes. A significant stroke is discriminated by the maximum correlation with respect to the reference signatures. The correlation value and stroke length for the significant strokes are extracted as features for identifying genuine signatures against forgeries. The membership function and classifier are modeled based on the probabilistic distribution of selected features. Experimental results were obtained for signatures from 20 volunteers. The current 6-feature based signature verification system was calculated to have a false accept rate of 1.67% and false reject rate of 6.67%.
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