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Open AccessArticle
MDSCNet: A Lightweight Radar Image-Based Model for Multi-Action Classification in Elderly Healthcare
by
Xiangbo Kong
Xiangbo Kong
Dr. Xiangbo Kong is a lecturer in the Faculty of Engineering
at Toyama Prefectural University in to [...]
Dr. Xiangbo Kong is a lecturer in the Faculty of Engineering
at Toyama Prefectural University in Japan. From 2022 to 2023, he worked as a
visiting scholar in the Graduate School of Information Science and Technology
at the University of Tokyo. From 2020 to 2023, he worked as an assistant
professor in the College of Science and Engineering at Ritsumeikan University. His
keywords and areas of expertise include embedded systems, IoT systems, and
image processing in healthcare.
1,*
,
Kenshi Saho
Kenshi Saho
Professor Kenshi Saho is an associate
professor in the Department of Electronic and Computer Japan. [...]
Professor Kenshi Saho is an associate
professor in the Department of Electronic and Computer Engineering, Ritsumeikan
University, Japan. He completed his PhD in Informatics from Kyoto University
in 2013. His research interests include signal processing for micro-Doppler
radar sensing and smart sensor fusion systems for remote monitoring systems.
2
and
Akari Takebayashi
Akari Takebayashi 3
1
Department of Intelligent Robotics, Faculty of Information Engineering, Toyama Prefectural University, Imizu, Toyama 939-0398, Japan
2
Department of Electronic and Computer Engineering, College of Science and Engineering, Ritsumeikan University, Kusatsu, Shiga 525-8577, Japan
3
Graduate School of Engineering, Toyama Prefectural University, Imizu, Toyama 939-0398, Japan
*
Author to whom correspondence should be addressed.
Inventions 2025, 10(6), 98; https://doi.org/10.3390/inventions10060098 (registering DOI)
Submission received: 17 August 2025
/
Revised: 20 October 2025
/
Accepted: 30 October 2025
/
Published: 31 October 2025
Abstract
This study presents MDSCNet, a compact radar image-based deep learning model for multi-action classification in elderly healthcare scenarios. Motivated by the need for real-time deployment on resource-constrained devices, MDSCNet employs a streamlined architecture with a small number of lightweight expansion–depthwise–projection blocks, removing complex attention and squeeze-and-excitation modules to minimize computational overhead. The model is evaluated on a millimeter-wave radar dataset covering five healthcare-related actions: lying, sitting, standing, bed-exit, and falling, performed by 15 participants on an actual electric nursing bed. The experimental results demonstrate that MDSCNet achieves accuracy comparable to state-of-the-art CNN-based methods while maintaining an extremely compact model size of only 0.29 MB, showing its suitability for practical elderly care applications where both accuracy and efficiency are critical.
Share and Cite
MDPI and ACS Style
Kong, X.; Saho, K.; Takebayashi, A.
MDSCNet: A Lightweight Radar Image-Based Model for Multi-Action Classification in Elderly Healthcare. Inventions 2025, 10, 98.
https://doi.org/10.3390/inventions10060098
AMA Style
Kong X, Saho K, Takebayashi A.
MDSCNet: A Lightweight Radar Image-Based Model for Multi-Action Classification in Elderly Healthcare. Inventions. 2025; 10(6):98.
https://doi.org/10.3390/inventions10060098
Chicago/Turabian Style
Kong, Xiangbo, Kenshi Saho, and Akari Takebayashi.
2025. "MDSCNet: A Lightweight Radar Image-Based Model for Multi-Action Classification in Elderly Healthcare" Inventions 10, no. 6: 98.
https://doi.org/10.3390/inventions10060098
APA Style
Kong, X., Saho, K., & Takebayashi, A.
(2025). MDSCNet: A Lightweight Radar Image-Based Model for Multi-Action Classification in Elderly Healthcare. Inventions, 10(6), 98.
https://doi.org/10.3390/inventions10060098
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