Title
Design of Human Activity Recognition Algorithms Based on a Single Wearable IMU Sensor
Publication Date
6-16-2019
Document Type
Article
Abstract
In recent years, with the rapid development of inertial measurement unit (IMU) technology, wireless body area network and pattern recognition theory, human motion recognition based on wearable technology has gradually gained the attention of researchers. In this paper, the human activity recognition method based on wearable sensor motion information fusion is studied. On the existing wearable system platform, the time domain analysis and frequency domain analysis of human motion information are used to distinguish the daily activity of the human body, and based on the human motion data acquisition experiment, time domain features, frequency domain features and attitude angles of the human motion data are used as identification features. On that basis multi-classification activity recognition algorithm based on support vector machine is proposed and human motion pattern recognition is carried out. The experimental results show that the system can accurately identify the daily activity of the human body.
Publication Title
International Journal of Sensor Networks (IJSNET)
Volume
30
Issue
3
First Page
193
Last Page
206
Publisher Policy
post print (12 month embargo)
Open Access Status
Licensed
Recommended Citation
Gao, Chunming; Zhuang, Wei; Chen, Yi; Su, Jian; and Wang, Baowei, "Design of Human Activity Recognition Algorithms Based on a Single Wearable IMU Sensor" (2019). School of Engineering and Technology Publications. 360.
https://digitalcommons.tacoma.uw.edu/tech_pub/360