Document Type
Article
Publication Date
8-2022
Publication Source
Sensors
Abstract
Human Activity Recognition (HAR) that includes gait analysis may be useful for various rehabilitation and telemonitoring applications. Current gait analysis methods, such as wearables or cameras, have privacy and operational constraints, especially when used with older adults. Millimeter-Wave (MMW) radar is a promising solution for gait applications because of its low-cost, better privacy, and resilience to ambient light and climate conditions. This paper presents a novel human gait analysis method that combines the micro-Doppler spectrogram and skeletal pose estimation using MMW radar for HAR. In our approach, we used the Texas Instruments IWR6843ISK-ODS MMW radar to obtain the micro-Doppler spectrogram and point clouds for 19 human joints. We developed a multilayer Convolutional Neural Network (CNN) to recognize and classify five different gait patterns with an accuracy of 95.7 to 98.8% using MMW radar data. During training of the CNN algorithm, we used the extracted 3D coordinates of 25 joints using the Kinect V2 sensor and compared them with the point clouds data to improve the estimation. Finally, we performed a real-time simulation to observe the point cloud behavior for different activities and validated our system against the ground truth values. The proposed method demonstrates the ability to distinguish between different human activities to obtain clinically relevant gait information.
ISBN/ISSN
1424-8220
Document Version
Published Version
Publisher
MDPI
Volume
22
Peer Reviewed
yes
Issue
15
Sponsoring Agency
School of Engineering at University of Dayton
eCommons Citation
Alanazi, Mubarak A.; Alhazmi, Abdullah K.; Alsattam, Osama; Gnau, Kara; Brown, Meghan; Thiel, Shannon; Jackson, Kurt; and Chodavarapu, Vamsy P., "Towards a Low-Cost Solution for Gait Analysis Using Millimeter Wave Sensor and Machine Learning" (2022). Electrical and Computer Engineering Faculty Publications. 446.
https://ecommons.udayton.edu/ece_fac_pub/446
Included in
Computer Engineering Commons, Electrical and Electronics Commons, Electromagnetics and Photonics Commons, Optics Commons, Other Electrical and Computer Engineering Commons, Systems and Communications Commons
Comments
This open-access article is provided for download in compliance with the publisher’s policy on self-archiving. To view the version of record, use the DOI: https://doi.org/10.3390/s22155470