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Learning Discriminative Feature Hierarchies for Off-Line Signature Verification

机译:学习区分特征层次结构以进行离线签名验证

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Handwritten signature is the most widespread and socially accepted method for personal authentication. Therefore automatic handwritten signature verification (HSV) is a task of realistic significance and a popular research topic in the field of pattern recognition. In this paper, we propose to learn discriminative feature hierarchies using supervised convolutional neural networks (CNN) to improve the off-line HSV performance. The feature space is modeled at both the global and local levels, combines clues from both shallow and deep representations, and is expected to capture intrinsic properties of handwritten signatures. Writer-dependent support vector machines (SVM) are trained based on the learned features for verification. Experimental results show that our method achieves competitive performance on two benchmark data sets, namely the MCYT-75 data set and the CEDAR data set.
机译:手写签名是最普遍和社会认可的个人身份验证方法。因此,自动手写签名验证(HSV)是一项具有现实意义的任务,并且是模式识别领域的热门研究课题。在本文中,我们建议使用监督卷积神经网络(CNN)学习判别特征层次结构,以提高离线HSV性能。特征空间在全局和局部级别上建模,结合了浅层和深层表示的线索,并有望捕获手写签名的内在属性。依赖于编写者的支持向量机(SVM)会根据学习到的功能进行训练,以进行验证。实验结果表明,该方法在MCYT-75数据集和CEDAR数据集这两个基准数据集上均具有竞争优势。

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