Off Line Handwritten Signature Verification Based on Feature Fusion

Nurbiya Xamxidin, Mahpirat Mamat, Wenxiong Kang, A. Aysa, K. Ubul
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Abstract

At present most of the research on offline handwritten signature is based on a single language and the problems of the sparse signature image, weak feature representation ability and low verification rate have not been well solved. In this paper, the off-line handwritten signature images of two different languages including Chinese and Kazakh are used as experimental data. the experimental results show that even a small amount of training data. The accuracy rate of this paper in multi-lingual off-line handwritten signature verification can still reach 96.74% compared with related work the verification effect of this method is higher.
基于特征融合的离线手写签名验证
目前对离线手写签名的研究大多是基于单一语言的,签名图像稀疏、特征表示能力弱、验证率低等问题还没有得到很好的解决。本文以中文和哈萨克语两种不同语言的离线手写签名图像作为实验数据。实验结果表明,即使是少量的训练数据。本文在多语种离线手写签名验证中的准确率仍可达到96.74%,与相关工作相比,该方法的验证效果更高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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