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A Machine Learning based Human Activity Recognition during Physical Exercise using Wavelet Packet Transform of PPG and Inertial Sensors data

机译:一种基于机器学习的人类活动识别在使用PPG和惯性传感器数据的小波包变换的体育锻炼过程中

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Nowadays, high availability of optical and inertial sensors in fitness trackers and mobile phone attracts researchers attention on human activity recognition(HAR) through photo-plethysmography and inertial sensor data. It is also more suitable than camera based HAR in different circumstances. In this paper, we propose a wavelet packet transform based feature extraction technique from PPG along with accelerometer and gyroscope data to differentiate various physical activities like high and low resistance biking, running and walking. Wavelet packet transform(WPT) is applied on acquired signals and a number of statistical features and entropy feature are extracted. Random forest(RF) classifier is employed in recognition. A 5-fold cross validation is done to examine the performance and an accuracy of 97.8% is achieved which surpasses existing algorithms worked on the same dataset.
机译:如今,健身跟踪器和手机中的光学和惯性传感器的高可用性吸引了研究人员通过光学体积描记法和惯性传感器数据来关注人类活动识别(Har)。在不同情况下,它比基于相机的RAR更合适。在本文中,我们提出了一种基于小波分组变换的基于PPG的特征提取技术以及加速度计和陀螺数据,以区分高和低电阻自行车,跑步和行走等各种物理活动。小波包变换(WPT)应用于获取的信号,并提取多个统计特征和熵特征。随机森林(RF)分类器被采用识别。完成了5倍的交叉验证以检查性能,实现了97.8%的准确性,以超过相同数据集的现有算法超越现有算法。

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