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Automatic person identification system using handwritten signatures

机译:使用手写签名的自动人员识别系统

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This paper reports the design, implementation, and evaluation of a research work for developing an automatic person identification system using hand signatures biometric. The developed automatic person identification system mainly used toolboxes provided by MATLAB environment‥ In order to train and test the developed automatic person identification system, an in-house hand signatures database is created, which contains hand signatures of 100 persons (50 males and 50 females) each of which is repeated 30 times. Therefore, a total of 3000 hand signatures are collected. The collected hand signatures have gone through pre-processing steps such as producing a digitized version of the signatures using a scanner, converting input images type to a standard binary images type, cropping, normalizing images size, and reshaping in order to produce a ready-to-use hand signatures database for training and testing the automatic person identification system. Global features such as signature height, image area, pure width, and pure height are then selected to be used in the system, which reflect information about the structure of the hand signature image. For features training and classification, the Multi-Layer Perceptron (MLP) architecture of Artificial Neural Network (ANN) is used. This paper also investigates the effect of the persons'' gender on the overall performance of the system. For performance optimization, the effect of modifying values of basic parameters in ANN such as the number of hidden neurons and the number of epochs are investigated in this work. The handwritten signature data collected from male persons outperformed those collected from the female persons, whereby the system obtained average recognition rates of 76.20% and74.20% for male and female persons, respectively. Overall, the handwritten signatures based system obtained an average recognition rate of 75.20% for all persons.
机译:本文报告了一项设计,实施和评估的研究工作,该研究用于开发使用生物签名的自动人员识别系统。开发的自动人员识别系统主要使用MATLAB环境提供的工具箱‥为了训练和测试开发的自动人员识别系统,创建了一个内部手签名数据库,其中包含100个人的手签名(男50位,女50位) ),每个重复30次。因此,总共收集了3000个手签名。收集到的手签名已经过预处理步骤,例如使用扫描仪生成签名的数字化版本,将输入图像类型转换为标准二进制图像类型,裁剪,标准化图像大小以及重新整形以便生成现成的-使用手签名数据库来训练和测试自动人员识别系统。然后选择全局特征,例如签名高度,图像区域,纯宽度和纯高度,以在系统中使用,这些特征反映有关手签名图像的结构的信息。对于特征训练和分类,使用了人工神经网络(ANN)的多层感知器(MLP)体系结构。本文还研究了人员性别对系统整体性能的影响。为了优化性能,在这项工作中研究了在ANN中修改基本参数值(例如隐藏神经元的数量和时期的数量)的效果。从男性收集的手写签名数据胜过从女性收集的手写签名数据,因此该系统获得的男性和女性平均识别率分别为76.20%和74.20%。总体而言,基于手写签名的系统对所有人的平均识别率为75.20%。

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