Single Triaxial Accelerometer-Gyroscope Classification for Human Activity Recognition

A. E. Minarno, Wahyu Andhyka Kusuma, Hardianto Wibowo, Denar Regata Akbi, N. Jawas
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引用次数: 11

Abstract

Evaluated activity as a detail of the human physical movement has become a leading subject for researchers. Activity recognition application is utilized in several areas, such as living, health, game, medical, rehabilitation, and other smart home system applications. For recognizing the activity, the accelerometer was popular sensors. As well as a gyroscope, in addition to dimension, low computation, and can be embedded in a smartphone. Used smartphone with an accelerometer as a popular solution for recognized daily activity. Signal was generated from the accelerometer as a time-series data is an actual approach like a human activity pattern. Traditional machine learning method in mid of the modern method worth it considering. Single position triaxial accelerometer-gyroscope Motion data have acquired in an of 30 volunteers. Basic actives (Laying, Standing, Sitting, Walking, Walking Upstairs, Walking Downstairs) were collected from volunteers. Decision Tree, Random Forest, Extra Trees Classifier, KNN, Logistic Regression, SVC, Ensemble Vote Classifier. The purposed method, logistic regression, achieves 98% accuracy. Furthermore, any feature selection and extraction method were not used.
单三轴加速度计-陀螺仪分类人体活动识别
评估活动作为人类身体运动的一个细节已经成为研究人员的一个前沿课题。活动识别应用应用于生活、健康、游戏、医疗、康复等智能家居系统应用领域。为了识别活动,加速度计是一种流行的传感器。和陀螺仪一样,除了尺寸小,计算量低,而且可以嵌入智能手机中。使用带有加速度计的智能手机作为公认的日常活动的流行解决方案。从加速度计中产生的信号作为时间序列数据是一种类似于人类活动模式的实际方法。传统的机器学习方法在现代方法中值得考虑。在30名志愿者中获得了单位置三轴加速度计-陀螺仪的运动数据。收集志愿者的基本活动(躺着、站立、坐着、行走、上楼、下楼)。决策树,随机森林,额外树分类器,KNN,逻辑回归,SVC,集成投票分类器。目的方法,逻辑回归,达到98%的准确率。此外,没有使用任何特征选择和提取方法。
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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