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Eye movement identification based on accumulated time feature

机译:基于累积时间特征的眼睛运动识别

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Eye movement is a new kind of feature for biometrical recognition, it has many advantages compared with other features such as fingerprint, face, and iris. It is not only a sort of static characteristics, but also a combination of brain activity and muscle behavior, which makes it effective to prevent spoofing attack. In addition, eye movements can be incorporated with faces, iris and other features recorded from the face region into multimode systems. In this paper, we do an exploring study on eye movement identification based on the eye movement datasets provided by Komogortsev et al. in 2011 with different classification methods. The time of saccade and fixation are extracted from the eye movement data as the eye movement features. Furthermore, the performance analysis was conducted on different classification methods such as the BP, RBF, ELMAN and SVM in order to provide a reference to the future research in this field.
机译:眼睛运动是一种新的生物识别特征,与其他特征相比,如指纹,脸部和虹膜相比,它具有许多优点。它不仅是一种静态特征,而且是脑活动和肌肉行为的组合,使其有效地防止欺骗攻击。另外,眼球可以与从面部区域记录成多模系统的面,虹膜和其他特征结合到多模系统中。在本文中,我们根据Komogortsv等人提供的眼球运动数据集进行眼球运动识别的探索研究。 2011年以不同的分类方法。作为眼睛运动特征从眼球移动数据中提取扫视和固定的时间。此外,在不同的分类方法中进行性能分析,例如BP,RBF,ELMAN和SVM,以便提供对该领域未来研究的引用。

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