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Distance and Fuzzy Classifiers Alliance The Solution to Off-line Arabic Signature Verification System for Forensic Science

机译:距离和模糊分类器联盟对法医学科学的离线阿拉伯语签名验证系统的解决方案

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Signature of a person is one of the most popular and legally accepted behavioral biometrics that provides secure means for verification and personal identification in many applications such as financial, commercial and legal transactions. The objective of the signature verification system is to classify between genuine and forgery that is often associated with intrapersonal and interpersonal variability. Unlike other languages, Arabic has unique features; it contains diacritics, ligatures, and overlapping. ?Because of lacking any form of dynamic information during the Arabic signature writing process, it will be more difficult to obtain higher verification accuracy. This paper addresses the above difficulty by introducing a novel Off-Line Arabic signature verification algorithm. Different from state-of-the-art works that adopt one-level of verification or multiple classifiers based on statistical learning theory; this work employs two-level of fuzzy set related verification. The level one verification depends on finding the total difference between the features extracted from the test signature and the mean values of each corresponding features in the training signatures (owning the same signature). Whereas, the level two verification relies on the output of the fuzzy logic module depending on the membership functions that has been created from the signature features in the training dataset for a specific signer. It is concluded from the experimental results that the verification system performs well and has the ability to reduce both False Acceptance Rate (FAR) and False Rejection Rate (FRR).
机译:一个人的签名是最受欢迎和合法的行为生物识别学之一,为许多诸如金融,商业和法律交易等许多应用中验证和个人识别提供安全的手段。签名验证系统的目的是在真实和伪造之间进行分类,通常与内在和人际交易性有关。与其他语言不同,阿拉伯语具有独特的功能;它含有变形物,韧带和重叠。 ?由于在阿拉伯语签名写作过程中缺乏任何形式的动态信息,因此获得更高的验证准确性将更加困难。本文通过引入新的离线阿拉伯语签名验证算法来解决上述困难。与最先进的作品不同,基于统计学习理论采用一级验证或多分类计;这项工作采用了两级模糊设置相关验证。一个验证的级别取决于找到从测试签名中提取的特征与训练签名中的每个对应特征的平均值之间的总差(拥有相同的签名)。虽然,两级验证依赖于模糊逻辑模块的输出,具体取决于从训练数据集中创建的成员资格函数,该函数是特定签名者的培训数据集中的签名功能。从实验结果结束,验证系统表现良好并且能够减少假验收率(远)和假拒绝率(FRR)。

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