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Off-line Signature Verification based on the Modified Direction Feature

机译:基于修改方向特征的离线签名验证

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Signature identification and verification has been a topic of interest and importance for many years in the area of biometrics. In this paper we present an effective method to perform off-line signature verification and identification. To commence the process, the signature's contour is first determined from its binary representation. Unique structural features are subsequently extracted from the signature's contour through the use of a novel combination of the modified direction feature (MDF) in conjunction with additional distinguishing features to train and test two neural network-based classifiers. A resilient back propagation neural network and a radial basis function neural network were compared. Using a publicly available database of 2106 signatures containing 936 genuine and 1170 forgeries, we obtained a verification rate of 91.12%
机译:多年来,在生物识别领域,签名识别和验证一直是人们关注和重视的话题。在本文中,我们提出了一种执行离线签名验证和识别的有效方法。首先,根据签名的二进制表示确定签名的轮廓。随后,通过使用修改后的方向特征(MDF)与其他区分特征的新颖组合,从签名的轮廓中提取出独特的结构特征,以训练和测试两个基于神经网络的分类器。比较了弹性反向传播神经网络和径向基函数神经网络。使用2106个签名的公开数据库,其中包含936份真伪和1170份伪造品,我们的验证率为91.12%

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