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A Recurrent Neural Network based deep learning model for offline signature verification and recognition system

机译:基于反营验证验证系统的经常性神经网络的深度学习模型

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With the recent advancement in information technology field, the demand to develop a person authentication system through verifying their offline signatures is gradually increasing. This type of system may be used to verify various official documents through verifying the signatures of the concerned persons present in the documents. This article proposes a Recurrent Neural Network (RNN), a deep learning network, based method to verify and recognize offline signatures of different persons. Various structural and directional features have been extracted locally from each signature sample and the generated feature vectors have been studied using two different models of RNN-long-short term memory (LSTM) and bidirectional long-short term memory (BLSTM). The performance of the proposed system has been tested on six widely used public signature databases-GPDS synthetic, GPDS-300, MCYT-75, CEDAR, BHSig260 Hindi, and BHSig260 Bengali. Experiment has also been performed using Convolutional Neural Network (CNN) to have a comparison with RNN based results. Experimental results demonstrate that the proposed RNN based signature verification and recognition system is superior over CNN and also outperforms the existing state-of-the-art results in this regard.
机译:随着信息技术领域最近的进步,通过验证其离线签名来开发一个人身份验证系统的需求逐渐增加。这种类型的系统可用于通过验证文件中有关人员的签名来验证各种官方文件。本文提出了一种经常性的神经网络(RNN),基于深度学习网络,用于验证和识别不同人的离线签名的方法。已经从每个签名样本本地提取了各种结构和方向特征,并使用两个不同的RNN长期存储器(LSTM)和双向长短短期存储器(BLSTM)研究生成的特征向量。拟议系统的性能已在六次广泛使用的公共签名数据库-GPDS合成,GPDS-300,MCYT-75,CEDAR,BHSIG260 Hindi和Bhsig260 Bengali上进行了测试。还使用卷积神经网络(CNN)进行实验,与基于RNN的结果进行比较。实验结果表明,所提出的基于RNN的签名验证和识别系统在CNN上优越,并且在这方面的现有最先进的结果也优于现有的。

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