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The Elastic k-Nearest Neighbours Classifier for Touch Screen Gestures

机译:触摸屏手势的弹性k最近邻分类器

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Touch screen gestures are a well-known method of person authentication in mobile devices. In most applications it is, however, reduced to checking if the user entered the correct pattern. Using additional information based on the speed and shape of finger movements can provide higher security without significantly impacting the convenience of this authorization method. In this work a new distance function for the k-nearest neighbour (kNN) classifier is considered in the problem of person recognition based on touch screen gestures. The function is based on the well-known L~p distance and the elastic distance considered in elastic shape analysis. Performance of the classifier is measured using 5-fold stratified cross-validation on a set of 12 people. Only four gesture performances per gesture for each person are used to train a model. The effects of sampling rate on the classifier performance is also measured. The fcNN classifier with the proposed distance function has higher accuracy than both the L~p distance and the elastic distance.
机译:触摸屏手势是移动设备中人员身份验证的一种众所周知的方法。但是,在大多数应用程序中,只需要检查用户是否输入了正确的图案即可。基于手指移动的速度和形状使用其他信息可以提供更高的安全性,而不会显着影响此授权方法的便利性。在这项工作中,在基于触摸屏手势的人员识别问题中,考虑了一种新的距离最近的k近邻(kNN)分类器功能。该函数基于众所周知的L〜p距离和弹性形状分析中考虑的弹性距离。分类器的性能是使用12人一组的5倍分层交叉验证来衡量的。每个人每个手势只有四个手势表现可用于训练模型。还测量了采样率对分类器性能的影响。具有距离函数的fcNN分类器比L〜p距离和弹性距离都具有更高的精度。

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