An extended-shadow-code based approach for off-line signature verification. II. Evaluation of several multi-classifier combination strategies

R. Sabourin, Ginette Genest
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引用次数: 17

Abstract

For pt.I see Proc. 12th ICPR, p.450-3. In a real situation, the choice of the best representation R(/spl gamma/) for the implementation of a signature verification system able to cope with all types of handwriting is a very difficult task. This study is original in that the design of the integrated classifiers E(x) is based on a large number of individual classifiers e/sub k/(x) (or signature representations R(/spl gamma/)) in an attempt to overcome in some way the need for feature selection. In this paper, the authors present a first systematical evaluation of a multi-classifier-based approach for off-line signature verification. Two types of integrated classifiers based on kNN or minimum distance classifiers and 15 types of representation related to the ESC used as a shape factor have been evaluated using a signature database of 800 images (20 writers/spl times/40 signatures per writer) in the context of random forgeries.
一种基于扩展阴影码的离线签名验证方法。2几种多分类器组合策略的评价
关于p.i,见第12届公民权利公约程序,第450-3页。在实际情况中,为实现能够处理所有类型笔迹的签名验证系统选择最佳表示R(/spl gamma/)是一项非常困难的任务。本研究的独创性在于,集成分类器E(x)的设计基于大量的单个分类器E /sub k/(x)(或签名表示R(/spl gamma/)),试图以某种方式克服特征选择的需要。在本文中,作者首次系统地评估了一种基于多分类器的离线签名验证方法。基于kNN或最小距离分类器的两种类型的集成分类器和15种与ESC相关的表示类型作为形状因子,已经在随机伪造的背景下使用800个图像的签名数据库(20个作家/spl次/每个作家40个签名)进行了评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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