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

机译:基于扩展阴影码的离线签名验证方法。 II。 评估几种多分类器组合策略

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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.
机译:对于pt.i查看proc。 第12 ICPR,P.450-3。 在真实情况下,选择最佳表示R(/ SPL Gamma /),用于实现能够应对所有类型的手写的签名验证系统是一项非常艰巨的任务。 该研究是原始的,因为集成分类器E(x)的设计基于大量的单独分类器E / sub k /(x)(或签名表示R(/ spl伽玛/))以克服 以某种方式需要特征选择。 在本文中,作者呈现了基于多分类器的离线签名验证方法的第一次系统评估。 使用800张图像的签名数据库(每个编写器的20编写器/ SPL时间/ 40签名)评估了基于KNN或最小距离分类器的两种类型的集成分类器和与用于形状因子相关的15种表示。 随机培训的背景。

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