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AdaBoost-based on-line signature verifier

机译:基于AdaBoost的在线签名验证器

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Authentication of individuals is rapidly becoming an important issue. The authors previously proposed a Pen-input online signature verification algorithm. The algorithm considers a writer's signature as a trajectory of pen position, pen pressure, pen azimuth, and pen altitude that evolve over time, so that it is dynamic and biometric. Many algorithms have been proposed and reported to achieve accuracy for on-line signature verification, but setting the threshold value for these algorithms is a problem. In this paper, we introduce a user-generic model generated by AdaBoost, which resolves this problem. When user- specific models (one model for each user) are used for signature verification problems, we need to generate the models using only genuine signatures. Forged signatures are not available because imposters do not give forged signatures for training in advance. However, we can make use of another's forged signature in addition to the genuine signatures for learning by introducing a user generic model. And Adaboost is a well-known classification algorithm, making final decisions depending on the sign of the output value. Therefore, it is not necessary to set the threshold value. A preliminary experiment is performed on a database consisting of data from 50 individuals. This set consists of western-alphabet-based signatures provide by a European research group. In this experiment, our algorithm gives an FRR of 1.88% and an FAR of 1.60%. Since no fine-tuning was done, this preliminary result looks very promising.
机译:个人认证正迅速成为一个重要问题。作者先前提出了Pen-input在线签名验证算法。该算法将作者签名视为随时间变化的笔位置,笔压力,笔方位角和笔高度的轨迹,因此它是动态的并且具有生物特征。已经提出并报告了许多算法来实现在线签名验证的准确性,但是为这些算法设置阈值是一个问题。在本文中,我们介绍了由AdaBoost生成的用户通用模型,它可以解决此问题。当使用特定于用户的模型(每个用户一个模型)来解决签名验证问题时,我们需要仅使用真实签名来生成模型。无法使用伪造的签名,因为冒名顶替者不会事先提供伪造的签名进行培训。但是,除了真正的签名之外,我们还可以通过引入用户通用模型来利用他人的伪造签名。 Adaboost是一种著名的分类算法,根据输出值的符号做出最终决策。因此,没有必要设置阈值。在包含来自50个个体的数据的数据库上执行了初步实验。该集合由欧洲研究小组提供的基于西方字母的签名组成。在此实验中,我们的算法给出了1.8%的FRR和1.60%的FAR。由于未进行任何微调,因此初步结果看起来很有希望。

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