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Identity verification based on haptic handwritten signatures: genetic programming with unbalanced data

机译:基于触觉手写签名的身份验证:具有不平衡数据的遗传编程

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摘要

In this paper, haptic-based handwritten signature verification using Genetic Programming (GP) classification is presented. The relevance of different haptic data types (e.g., force, position, torque, and orientation) in user identity verification is investigated. In particular, several fitness functions are used and their comparative performance is investigated. They take into account the unbalance dataset problem (large disparities within the class distribution), which is present in identity verification scenarios. GP classifiers using such fitness functions compare favorably with classical methods. In addition, they lead to simple equations using a much smaller number of attributes. It was found that collectively, haptic features were approximately as equally important as visual features from the point of view of their contribution to the identity verification process.
机译:在本文中,提出了使用遗传编程(GP)分类的基于触觉的手写签名验证。研究了用户身份验证中不同触觉数据类型(例如,力,位置,扭矩和方向)的相关性。特别是,使用了几种适应度函数并研究了它们的比较性能。他们考虑了身份验证场景中存在的不平衡数据集问题(类分布内的巨大差异)。使用此类适应度函数的GP分类器与经典方法相比具有优势。另外,它们导致使用更少数量的属性的简单方程式。从总体上看,从触觉特征对身份验证过程的贡献的角度来看,它们具有与视觉特征同等重要的地位。

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