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Performance Analysis of Classification Algorithms for Activity Recognition Using Micro-Doppler Feature

机译:基于微多普勒特征的活动识别分类算法的性能分析

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Classification of different human activities using micro-Doppler data and features is considered in this study, focusing on the distinction between walking and running. 240 recordings from 2 different human subjects were collected in a series of simulations performed in the real motion data from the Carnegie Mellon University Motion Capture Database. The maximum the micro-Doppler frequency shift and the period duration are utilized as two classification criterions. Numerical results are compared against several classification techniques including the Linear Discriminant Analysis (LDA), Naïve Bayes (NB), K-nearest neighbors (KNN), Support Vector Machine(SVM) algorithms. The performance of different classifiers is discussed aiming at identifying the most appropriate features for the walking and running classification.
机译:本研究考虑使用微多普勒数据和特征对不同人类活动进行分类,重点是步行和跑步之间的区别。在来自卡耐基梅隆大学运动捕捉数据库的真实运动数据中进行的一系列模拟中,收集了来自2个不同人类受试者的240条记录。将最大微多普勒频移和周期持续时间用作两个分类标准。将数值结果与几种分类技术进行比较,包括线性判别分析(LDA),朴素贝叶斯(NB),K近邻(KNN),支持向量机(SVM)算法。讨论了不同分类器的性能,旨在为步行和跑步分类识别最合适的功能。

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