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Development of Writer Independent Offline Signature Verification System through Multiple Classifier and Geometric Features

机译:通过多个分类器和几何特征开发独立于作者的脱机签名验证系统

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The signature is a very significant trait of an individual which serves not only for the identification of an individual but also for establishing the genuineness of official documents. The aim of this work is to investigate the scope of geometric features to develop a proficient offline signature verification system through multiple classifiers using writer-independent approach. The key focus of this work is to minimize the false acceptance rate for the simulated forgery. The classification task is accomplished through Support vector machine with Gaussian radial basis function and polynomial kernel. The k-fold cross validation method is utilized to construct the multiple classifier system of diverse classifiers. The genuine and random forgery signatures are considered to train the classifiers of multiple classifier system whereas genuine, random forgery and simulated forgery signatures are utilized to perform the testing process. A public signature database named GPDS is utilized to assess the performance of the proposed system. The simulation study reveals FRR of 7.00%, FARR of 0.00%, FARS of 0.00% thereby AER of 2.33% as the best result.
机译:签名是个人的一个非常重要的特征,它不仅用于识别个人身份,而且还用于确定正式文件的真实性。这项工作的目的是研究几何特征的范围,以使用独立于作者的方法通过多个分类器开发出一个熟练的离线签名验证系统。这项工作的重点是使模拟伪造的错误接受率降至最低。分类任务通过具有高斯径向基函数和多项式核的支持向量机完成。 k倍交叉验证方法用于构建各种分类器的多重分类器系统。真实伪造签名被认为是训练多分类器系统的分类器,而真实伪造签名和模拟伪造签名被用来执行测试过程。利用一个名为GPDS的公共签名数据库来评估所提议系统的性能。仿真研究表明,最佳结果是FRR为7.00%,FARR为0.00%,FARS为0.00%,从而AER为2.33%。

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