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Authentication of Offline Signatures Based on Central Tendency of Features and Dynamic Time Warping Values Preserved for Genuine Cases

机译:基于特征的中心趋势和真实案例保留的动态时间规整值的脱机签名认证

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This work proposes to authenticate offline signatures using a Case-Based Reasoner (CBR). The case base serves as a repository of sets of genuine signatures for which a central point on the n-dimensional global feature space is preserved along with the Inter-Quartile Range (IQR). These signatures are paired off to perform Dynamic Time Warping (DTW) comparison on their respective contours. Metrics generated from the global features and DTW values for the preserved signatures are utilized to predict authenticity of test signatures. Philosophically, CBR is a good classifier since it does not need any training by forgery models. The overall accuracy of the CBR classifier is maintained at a reasonably high value as a larger False Rejection Rate (FRR) is compensated by a tight False Acceptance Rate (FAR) value when compared with a MLP classifier. Both the classifiers have been tested on a standard offline signature database as well as one collected and prepared during the current research.
机译:这项工作建议使用基于案例的推理器(CBR)对脱机签名进行身份验证。案例库用作一组真实签名的存储库,对于这些签名,n维全局特征空间上的中心点与四分位间距(IQR)一起保留。将这些签名配对以对它们各自的轮廓执行动态时间规整(DTW)比较。从全局特征和保留签名的DTW值生成的度量标准可用于预测测试签名的真实性。从哲学上讲,CBR是很好的分类器,因为它不需要任何伪造模型训练。与MLP分类器相比,CBR分类器的总体准确性可保持较高的值,因为较大的错误拒绝率(FRR)将由严格的错误接受率(FAR)值进行补偿。两种分类器均已在标准脱机签名数据库中进行了测试,并且在当前研究期间已收集并准备了其中一种分类器。

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