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Offline Handwritten Signature Verification using CNN inspired by Inception V1 Architecture

机译:使用受Inception V1 Architecture启发的CNN进行离线手写签名验证

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In the field of behavioral biometric, signature verification is most referenced procedure for authentication of a person. A signature is considered to be the “seal of approval” for verifying the approval of a user and remains the most preferred means of authentication. This verification system mainly aims at verifying the discriminating the forged signature (forged by an imposter) from the genuine signatures. In this paper, Convolutional Neural Networks (CNN) have been utilized to learn features from the pre-processed genuine signatures and forged signatures. The CNN used is inspired by Inception V1 architecture(GoogleNet). The architecture uses the concept of having different filters on same level so that the network would be wider instead of deeper. In this paper, the proposed model is tested on few publicly available datasets such as CEDAR, BH-Sig260 signature corpus, and UTSig.
机译:在行为生物特征识别领域,签名验证是用于身份验证的最参考的过程。签名被认为是用于验证用户批准的“批准印章”,并且仍然是最优选的身份验证手段。该验证系统主要旨在验证伪造签名(由冒名顶替者伪造)与真实签名的区别。在本文中,已使用卷积神经网络(CNN)从经过预处理的真实签名和伪造签名中学习特征。所使用的CNN受到Inception V1体系结构(GoogleNet)的启发。该体系结构使用在同一级别具有不同过滤器的概念,因此网络将更宽而不是更深。在本文中,所提出的模型在诸如CEDAR,BH-Sig260签名语料库和UTSig等少数公开可用的数据集上进行了测试。

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