基于智能手机和集成学习的三轴加速度数据的人类活动识别

Narit Hnoohom, S. Mekruksavanich, A. Jitpattanakul
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引用次数: 29

摘要

近年来,智能手机传感器在人体活动识别(HAR)中的应用得到了很好的研究。大多数情况下,智能手机加速度计在解决HAR问题方面发挥了主要作用。然而,陀螺仪的作用还有待探讨,无论是单独使用还是与加速度计结合使用。为此,研究人员调查了这两种智能手机传感器在人类活动识别中的作用。提出了两种基于集成学习的方法,即多数投票和堆叠,以提高识别性能。此外,研究人员在识别六种身体活动(即站、坐、躺、走、上楼和下楼)的同时,使用两个集合分类器评估了两种身体姿势的方法的作用。实验结果表明,加速度计和陀螺仪在总体上是互补的,从而提高了识别性能。此外,基于集成学习的方法可以将识别性能提高到91.1667%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Human Activity Recognition Using Triaxial Acceleration Data from Smartphone and Ensemble Learning
In recent years, the use of smartphone sensors in human activity recognition (HAR) has been well studied. Mostly, a smartphone accelerometer has played the main role to solve the problem of HAR. However, the role of a gyroscope is to be explored, both when used alone as well as in combination with an accelerometer. For this purpose, the researchers investigated the role of these two smartphone sensors in human activity recognition. Two ensemble learning based approaches, i.e., majority voting and stacking, to improve recognition performance were presented. Also, the researchers evaluated the roles of the approaches on two body positions using the two ensemble classifiers while recognizing six physical activities, i.e., standing, sitting, laying, walking, walking upstairs, and walking downstairs. From the experimental results, it was shown that in general an accelerometer and a gyroscope complement each other, thereby making the recognition performance higher. Moreover, the ensemble learning based approaches could improve the recognition performance in terms of accuracy to 91.1667 percent.
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