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Online Signature Verification Based on Feature Combination and Classifier Fusion

机译:基于特征组合和分类器融合的在线签名验证

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Fusion of multiple classifiers is an area of biometrics research that has recently gained in popularity. A scheme for online signature verification using feature combination and classifier fusion based on F-Tablet was proposed. On one hand, we paid attention to the feature combination, role of writing forces, and suitability of feature sets on each kind of classifier. Performance evaluation on F-Tablet for different, classifiers and feature combinations suggested the average performance of most classifiers reached the best results when full coordinate and writing forces were presented. The DTW and SVM outperformed other classifiers in terms of EER with 2.86% and 3.68% respectively. However, when coordinate or writing forces only was offered, the writing forces outperformed trajectory, which indicated a huge information loss, especially in mobile environment that could not capture the writing forces for many sensors. On the other hand, in order to design high performance online signature verification system, it was necessary to consider the fusion of classifiers. The various classifier fusion schemes were compared experimentally. The performance of the fusion system was significantly improved compared with the performance of the single classifiers, with the best EER reaching 1.04%.
机译:多个分类器的融合是生物识别研究的一个领域,该领域最近变得越来越流行。提出了一种基于特征组合和分类器融合的在线签名验证方案。一方面,我们关注特征分类,书写作用以及每种分类器上特征集的适用性。在F-Tablet上针对不同,分类器和特征组合的性能评估表明,当呈现完整的坐标和书写力时,大多数分类器的平均性能达到了最佳结果。在EER方面,DTW和SVM分别优于其他分类器,分别为2.86%和3.68%。但是,当仅提供坐标或书写力时,书写力会超过轨迹,这意味着巨大的信息损失,尤其是在无法捕获许多传感器的书写力的移动环境中。另一方面,为了设计高性能的在线签名验证系统,有必要考虑分类器的融合。实验比较了各种分类器融合方案。与单个分类器的性能相比,融合系统的性能得到了显着改善,最佳EER达到1.04%。

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