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Online Signature Verification: Improving Performance through Pre-classification Based on Global Features

机译:在线签名验证:通过基于全局功能的预分类来提高性能

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摘要

In this paper, a pre-classification stage based on global features is incorporated to an online signature verification system for the purposes of improving its performance. The pre-classifier makes use of the discriminative power of some global features to discard (by declaring them as forgeries) those signatures for which the associated global feature is far away from its respective mean. For the remaining signatures, features based on a wavelet approximation of the time functions associated with the signing process, are extracted, and a Random Forest based classification is performed. The experimental results show that the proposed pre-classification approach, when based on the apppropriate global feature, is capable of getting error rate improvements with respect to the case where no pre-classification is performed. The approach also has the advantages of simplifying and speeding up the verification process.
机译:在本文中,基于全局特征的预分类阶段已合并到在线签名验证系统中,以提高其性能。预分类器利用某些全局特征的判别力来丢弃(通过将它们声明为伪造品)那些与全局特征相距甚远的签名。对于其余签名,提取基于与签名过程关联的时间函数的小波近似的特征,并执行基于随机森林的分类。实验结果表明,所提出的预分类方法在基于适当的全局特征的基础上,相对于未进行预分类的情况,能够提高错误率。该方法还具有简化和加速验证过程的优点。

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