Human Activity Recognition with Smartwatch Data by using Mahalanobis Distance-Based Outlier Detection and Ensemble Learning Methods

Serkan BALLI, Ensar Arif SAĞBAŞ
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Abstract

Recognition of human activities is part of smart healthcare applications. In this context, the detection of human actions with high accuracy has been a field that has been working for many years. With the increase in the usage of smart devices, smartphones and smartwatches have become the constant equipment of these studies thanks to their internal sensors. Sometimes abnormal data are included in data sets due to the way the data were collected and for reasons arising from the sensors. For this reason, it becomes important to detect outlier data. In this study, step counter and heart rate sensors were used in addition to an accelerometer and gyroscope in order to detect human activities. Afterward, the outliers were detected and cleared with a Mahalanobis distance-based approach. With the aim of achieving a better classification performance, machine learning methods were used by strengthening them with ensemble learning methods. The obtained results showed that step counter, heart rate sensors, and ensemble learning methods positively affect the success of the classification. In addition, it was found that the Mahalanobis distance-based outlier detection method increased the classification accuracy significantly.
基于Mahalanobis距离离群点检测和集成学习方法的智能手表数据人类活动识别
识别人类活动是智能医疗保健应用程序的一部分。在这种背景下,高精度的人类行为检测一直是一个已经工作多年的领域。随着智能设备使用的增加,智能手机和智能手表由于其内置传感器而成为这些研究的常用设备。有时,由于数据的收集方式和传感器引起的原因,数据集中包含异常数据。因此,检测异常数据变得非常重要。在这项研究中,除了加速度计和陀螺仪之外,还使用了计步器和心率传感器来检测人类的活动。之后,用基于马氏距离的方法检测和清除异常值。为了获得更好的分类性能,使用机器学习方法通过集成学习方法进行强化。得到的结果表明,计步器、心率传感器和集成学习方法对分类成功率有积极的影响。此外,发现基于马氏距离的离群点检测方法显著提高了分类精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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