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Off-line Signature Identification Using Background and Foreground Information

机译:使用背景和前台信息的离线签名识别

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Biometric systems play an important role in the field of information security as they are extremely required for user authentication. Automatic signature recognition and verification is one of the biometric techniques, which is currently receiving renewed interest and is only one of several techniques used to verify the identities of individuals. Signatures provide a secure means for confirmation and authorization in legal documents. So nowadays, signature identification and verification becomes an essential component in automating the rapid processing of documents containing embedded signatures. In this paper, a technique for a bi-script off-line signature identification system is proposed. In the proposed signature identification system, the signatures of English and Bengali (Bangla) are considered for the identification process. Different features such as under sampled bitmaps, modified chain-code direction features and gradient features computed from both background and foreground components are employed for this purpose. Support Vector Machines (SVMs) and Nearest Neighbour (NN) techniques are considered as classifiers for signature identification in the proposed system. A database of 1554 English signatures and 1092 Bengali signatures are used to generate the experimental results. Various results based on different features are calculated and analysed. The highest accuracies of 99.41%, 98.45% and 97.75% are obtained based on the modified chain-code direction, under-sampled bitmaps and gradient features respectively using 1800 (1100 English+700 Bengali) samples for training and 846 (454 English+392 Bengali) samples for testing.
机译:因为他们非常需要进行用户身份验证生物识别系统在信息安全领域的重要作用。自动签名识别和验证的生物识别技术,这是目前正在接受新的兴趣,仅用于验证个人身份几种技术之一之一。签名提供了法律文件的确认和授权的安全手段。所以现在,签名识别和验证成为自动化的包含嵌入签名文件的快速处理的必要成分。在本文中,为BI-脚本离线签名识别系统的技术建议。在所提出的签名识别系统,英语和孟加拉语(孟加拉)的签名被认为是识别过程。不同的功能,如位图采样下,经修饰的链码方向特征和梯度被用于此目的既背景和前景分量计算功能。支持向量机(SVM)和最近邻(NN)技术被认为是分类中所提出的系统签名鉴定。 1554个英文签名和1092个孟加拉语签名的数据库被用来生成的实验结果。基于不同特征的各种结果计算和分析。的99.41%,98.45%和97.75%的最高准确度获得基于修改的链码的方向,分别使用1800(1100英+ 700孟加拉语)样品用于训练和846(454英+ 392欠采样位图和梯度特征孟加拉语)样品进行测试。

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