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Design and implementation of deep learning strategy based smart signature verification System

机译:基于深度学习策略的智能签名验证系统的设计与实现

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The signature verification is broadly used for personal identification. The person is identified automatically using signature verification method to avoid forgery persons. The signature verification is classified into the static method and the dynamic method. The static verification method is based on stored images and the dynamic verification method is based on dynamic features of the signature. The integer wavelet transformation method is used to identify the breath and height ratio of the signature features. In addition to that spurious noise also removed before extracting the signature feature. And the signature is isolated from the background of the images. The extracted feature is analyzed using integer wavelet transformation and a neural network is selected to decide according to that original and forgery signature. As compared with the conventional system the proposed found to be about 20% error ratio. The database SVC2004 is selected to verify the signature. (c) 2020 Elsevier B.V. All rights reserved.
机译:签名验证广泛用于个人识别。该人使用签名验证方法自动识别,以避免伪造的人。签名验证被分类为静态方法和动态方法。静态验证方法基于存储的图像,动态验证方法基于签名的动态特征。整数小波变换方法用于识别签名特征的呼吸和高度比。除了在提取签名功能之前还删除了杂散噪声。并且从图像的背景中孤立签名。使用整数小波变换分析提取的特征,选择神经网络以根据该原始和伪造签名来决定。与传统系统相比,所提出的发现为约20%的误差比。选择数据库SVC2004以验证签名。 (c)2020 Elsevier B.v.保留所有权利。

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