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Application of Elastic Principal Component Analysis to Person Recognition Based on Screen Gestures

机译:弹性主成分分析在基于屏幕手势的人识别中的应用

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Person identification based on touch screen gestures is a well-known method of authentication in mobile devices. Usually it is only checked if the user entered the correct pattern. Taking into account other biometric data based on the speed and shape of finger movements can provide higher security while the convenience of this authorisation method is not impacted. In this work the application of Sequential Joint Functional Principal Analysis (FPCA) as a dimensionality reduction method for gesture data is explored. Performance of the classifier is measured using 5-fold stratified cross-validation on a set of gestures collected from 12 people. The effects of sampling rate on classification performance is also measured. It is shown that the Support Vector Machine classifier reaches the accuracy of 79% using features obtained using the Sequential Joint FPCA, compared to 70% in the case of Euclidean PCA.
机译:基于触摸屏手势的人员识别是移动设备中众所周知的身份验证方法。通常,仅检查用户输入的模式是否正确。基于手指移动的速度和形状考虑其他生物统计数据可以提供更高的安全性,而不会影响此授权方法的便利性。在这项工作中,探索了顺序联合功能主分析(FPCA)作为手势数据降维方法的应用。使用从12个人收集的一组手势进行5倍分层交叉验证来衡量分类器的性能。还测量了采样率对分类性能的影响。结果表明,使用顺序联合FPCA获得的特征,支持向量机分类器的准确度达到79%,而对于欧几里得PCA,则为70%。

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