Handwritten signature verification method based on improved combined features

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Abstract

As a behavior feature, handwritten signatures are widely used in financial and administra-tive institutions. The appearance of forged signatures will cause great property losses to customers. This paper proposes a handwritten signature verification method based on improved combined features. According to advanced smart pen technology, when writing a signature, offline images and online data of the signature can be obtained in real time. It is the first time to realize the combination of offline and online. We extract the static and dynamic features of the signature and verify them with support vector machine (SVM) and dynamic time warping (DTW) respectively. We use a small number of samples during the training stage, which solves the problem of insufficient number of samples to a certain extent. We get two decision scores while getting the verification result. Finally, we propose a score fusion method based on accuracy (SF-A), which combines offline and online features through score fusion and utilize the complementarity among classifiers effectively. Experimental results show that using different numbers of training samples to conduct experiments on local data sets, the false acceptance rate (FAR) and false reject rate (FRR) obtained are better than the offline or online verification results.

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APA

Zhou, Y., Zheng, J., Hu, H., & Wang, Y. (2021). Handwritten signature verification method based on improved combined features. Applied Sciences (Switzerland), 11(13). https://doi.org/10.3390/app11135867

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