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Online Signature Verification: Automatic Feature Selection vs. FHE's Choice

机译:在线签名验证:自动功能选择与FHE的选择

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摘要

In this paper, the discriminative power of a set of features which seems to be relevant to signature analysis by Forensic Handwriting Experts (FHEs) is analyzed and particularly compared to the discriminative power of automatically selected feature sets. This analysis could help FHEs to further understand the signatures and the writer behaviour. In addition, two information fusion schemes are proposed to combine the discriminative capability of the two types of features being considered. The coefficients in the wavelet decomposition of the different time functions associated with the signing process are used as features to model them. Two different signature styles are considered, namely, Western and Chinese, of one of the most recent publicly available Online Signature Databases. The experimental results are promising, especially for the features that seem to be relevant to FHEs, since the obtained verification error rates are comparable to the ones reported in the state-of-the-art over the same datasets. Further, the results also show that it is possible to combine both types of features to improve the verification performance.
机译:在本文中,分析了一组似乎与法医手写专家(FHE)的签名分析有关的特征的判别力,并将其与自动选择的特征集的判别力进行了比较。这种分析可以帮助FHE进一步了解签名和作者的行为。此外,提出了两种信息融合方案,以结合考虑的两种类型特征的判别能力。与签名过程相关的不同时间函数的小波分解系数用作模型建模的特征。考虑了两种不同的签名样式,即西方和中文,这是最近公开可用的在线签名数据库之一。实验结果很有希望,特别是对于那些似乎与FHE相关的功能,因为所获得的验证错误率与最新的相同数据集所报告的验证错误率相当。此外,结果还表明可以组合两种类型的特征以改善验证性能。

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