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Legendre polynomials based feature extraction for online signature verification. Consistency analysis of feature combinations

机译:基于勒让德多项式的特征提取用于在线签名验证。特征组合的一致性分析

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摘要

In this paper, feature combinations associated with the most commonly used time functions related to the signing process are analyzed, in order to provide some insight on their actual discriminative power for online signature verification. A consistency factor is defined to quantify the discriminative power of these different feature combinations. A fixed-length representation of the time functions associated with the signatures, based on Legendre polynomials series expansions, is proposed. The expansion coefficients in these series are used as features to model the signatures. Two different signature styles, namely, Western and Chinese, from a publicly available Signature Database are considered to evaluate the performance of the verification system. Two state-of-the-art classifiers, namely, Support Vector Machines and Random Forests are used in the verification experiments. Error rates comparable to the ones reported over the same signature datasets in a recent Signature Verification Competition, show the potential of the proposed approach. The experimental results, also show that there is a good correlation between the consistency factor and the verification errors, suggesting that consistency values could be used to select the optimal feature combination.
机译:在本文中,分析了与签名过程相关的最常用时间函数相关的特征组合,以便对其在线签名验证的实际判别力提供一些见识。定义一致性因子以量化这些不同特征组合的判别力。提出了基于勒让德多项式级数展开式的与签名相关的时间函数的定长表示。这些系列中的扩展系数用作对签名建模的特征。考虑使用公开签名库中的两种不同的签名样式,即西方和中文,以评估验证系统的性能。验证实验中使用了两个最先进的分类器,即支持向量机和随机森林。在最近的签名验证竞赛中,与通过相同签名数据集报告的错误率相当的错误率表明了该方法的潜力。实验结果还表明,一致性因子与验证误差之间具有良好的相关性,表明一致性值可用于选择最佳特征组合。

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