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Classification of Daily Human Activities Using Wearable Inertial Sensor

机译:使用可穿戴惯性传感器对日常人类活动进行分类

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Classification of daily human activities using wearable inertial sensors is presented. Two sensing devices namely the accelerometer sensor mounted on arduino controller and shimmer device are used for acquiring data. Data are acquired from thirty eight healthy subjects without any form of disabilities. Variation in classification accuracy considering data obtained from shimmer device, accelerometer sensor and combination of shimmer & accelerometer data are analysed. Performance of two classifiers namely the KNN classifier and SVM classifier in classifying actions are tested. Various experimental analyses proves that among the data considered for classification, combination of shimmer data and accelerometer data provided better results. Also KNN classifier is found to perform better with an average overall accuracy of 95.6% which is around 6% higher that the accuracy obtained with SVM classifier.
机译:介绍了使用可穿戴惯性传感器对人类日常活动进行分类。使用两个传感设备,即安装在arduino控制器上的加速度传感器和微光设备来获取数据。数据来自38名健康受试者,没有任何形式的残疾。考虑到从闪光设备,加速度传感器获得的数据以及闪光和加速度数据的组合,分类精度的变化。测试了两个分类器(即KNN分类器和SVM分类器)对动作进行分类的性能。各种实验分析证明,在考虑分类的数据中,微光数据和加速度计数据的组合提供了更好的结果。同样,发现KNN分类器的性能更好,平均总体准确度为95.6%,比使用SVM分类器获得的准确度高约6%。

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