Optimal Sensor Placement for Human Activity Recognition with a Minimal Smartphone-IMU Setup

Vincent Xeno Rahn, Lin Zhou, Eric Klieme, B. Arnrich
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引用次数: 3

Abstract

Human Activity Recognition (HAR) of everyday activities using smartphones has been intensively researched over the past years. Despite the high detection performance, smartphones can not continuously provide reliable information about the currently conducted activity as their placement at the subject’s body is uncertain. In this study, a system is developed that enables real-time collection of data from various Bluetooth inertial measurement units (IMUs) in addition to the smartphone. The contribution of this work is an extensive overview of related work in this field and the identification of unobtrusive, minimal combinations of IMUs with the smartphone that achieve high recognition performance. Eighteen young subjects with unrestricted mobility were recorded conducting seven daily-life activities with a smartphone in the pocket and five IMUs at different body positions. With a Convolutional Neural Network (CNN) for activity recognition, activity classification accuracy increased by up to 23% with one IMU additional to the smartphone. An overall prediction rate of 97% was reached with a smartphone in the pocket and an IMU at the ankle. This study demonstrated the potential that an additional IMU can improve the accuracy of smartphone-based HAR on daily-life activities.
用最小的智能手机- imu设置进行人类活动识别的最佳传感器放置
过去几年,人们对智能手机日常活动的人类活动识别(HAR)进行了深入研究。尽管智能手机具有很高的检测性能,但由于它们在受试者身体上的位置是不确定的,因此无法持续提供有关当前进行的活动的可靠信息。在本研究中,开发了一个系统,可以实时收集来自各种蓝牙惯性测量单元(imu)和智能手机的数据。这项工作的贡献是对该领域相关工作的广泛概述,以及识别不显眼的imu与智能手机的最小组合,以实现高识别性能。18名活动能力不受限制的年轻受试者在口袋里装着智能手机,在不同的身体姿势下使用5个imu进行7项日常生活活动。使用卷积神经网络(CNN)进行活动识别,在智能手机上增加一个IMU,活动分类准确率提高了23%。在口袋里放一个智能手机,脚踝上放一个IMU时,总体预测率达到了97%。这项研究表明,额外的IMU可以提高基于智能手机的HAR对日常生活活动的准确性。
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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