Offline Signature Verification Using Convolutional Neural Network

S. Bonde, P. Narwade, R. Sawant
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引用次数: 7

Abstract

Offline handwritten signature verification is widely used important form of biometrics. It is a challenging task due to time-variant nature of signature. To address the above difficulty, a new approach is proposed in this paper to compute the features of signatures. The proposed approach is divided into two parts: 1) writer-independent approach, 2) writer-dependent approach. Writer-independent approach is utilized for fine-tuning of VGG16 convolutional neural network (CNN). In writer-dependent approach, this fine-tuned CNN is utilized to extract the features from the signature. The signature is passed through this fine-tuned CNN and the vector obtained at first fully connected layer (after last convolutional layer) is used as feature vector. To obtain the accurate features for classification of signatures, the pixels of thinned signature image are replaced by their Gaussian Weighting Based Tangent Angle (GWBTA) in both writer-independent and writer-dependent approach. The computed features which are obtained in writer-dependent approach are fed to Support Vector Machine (SVM) classifier to classify the signature into genuine or forgery class. The performance results obtained on different databases of offline handwritten signatures confirms the validity of proposed methodology for offline signature verification.
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基于卷积神经网络的离线签名验证
离线手写签名验证是生物识别技术广泛应用的重要形式。由于签名的时变特性,这是一项具有挑战性的任务。为了解决上述问题,本文提出了一种计算签名特征的新方法。本文提出的方法分为两个部分:1)独立于作者的方法,2)依赖于作者的方法。采用与写入器无关的方法对VGG16卷积神经网络(CNN)进行微调。在依赖于写作者的方法中,利用这种微调的CNN从签名中提取特征。签名通过这个微调后的CNN,将第一个完全连接层(最后一个卷积层之后)得到的向量作为特征向量。为了获得用于签名分类的准确特征,将稀疏的签名图像像素替换为基于高斯加权的正切角(GWBTA),并采用独立和依赖两种方法进行分类。将计算得到的特征输入支持向量机分类器,将签名分为真伪两类。在不同的离线手写签名数据库上获得的性能结果证实了所提出的离线签名验证方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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