Effective Random-Impostor Training for Combined Segmentation Signature Verification

Keigo Matsuda, W. Ohyama, T. Wakabayashi, F. Kimura
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引用次数: 4

Abstract

In this paper, we propose an improvement to the method of combined segmentation verification for multi-script signature verification. In our previous paper, we proposed generalized segmentation verification (GSV) for multi-script signature verification and evaluated the method using the SigComp dataset. GSV improved the performance of multi-script signature verification by introducing a two-stage strategy in which, during the second stage, the support vector machine (SVM) evaluated matching scores that were derived by signature verifiers during the first stage. For this strategy, the SVM was trained using a dataset that consisted of genuine and skilled-forgery verification scores calculated from signatures of third persons, whose signatures were not registered in the system. However, it was difficult to prepare skilled-forgery signatures even though the method required third-person signatures. Our proposed multi-script signature verification method uses a training dataset that contains no skilled-forgery signatures. This method uses the genuine signatures of third persons as training samples of the forgery class for SVM training. We also introduce an effective sampling method that uses a one-class SVM to reduce the sample number for the training dataset. The results of evaluation experiments using the SigComp multi-script signature dataset show that the performance of the proposed method is competitive with that of the method trained with a skilled-forgery dataset for multi-script signature verification.
组合分割签名验证的有效随机冒名顶替训练
本文提出了一种改进的多脚本签名联合分割验证方法。在我们之前的论文中,我们提出了用于多脚本签名验证的广义分割验证(GSV),并使用SigComp数据集对该方法进行了评估。GSV通过引入两阶段策略提高了多脚本签名验证的性能,其中在第二阶段,支持向量机(SVM)评估签名验证者在第一阶段获得的匹配分数。对于这种策略,SVM使用一个数据集进行训练,该数据集由真实和熟练伪造的验证分数组成,该分数由第三方的签名计算得出,其签名未在系统中注册。但是,即使需要第三方签名,也很难制作熟练的伪造签名。我们提出的多脚本签名验证方法使用不包含熟练伪造签名的训练数据集。该方法使用第三人的真实签名作为伪造类的训练样本进行SVM训练。我们还介绍了一种有效的采样方法,该方法使用单类支持向量机来减少训练数据集的样本数量。使用SigComp多脚本签名数据集的评估实验结果表明,该方法的性能与使用熟练伪造数据集训练的多脚本签名验证方法具有竞争力。
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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