Fall Detection Based on Continuous Wave Radar Sensor Using Binarized Neural Networks

Accidents caused by falls among the elderly have become a significant social issue, making fall detection systems increasingly needed. Fall detection systems such as internet of things (IoT) devices must be affordable and compact because they must be installed in various locations around the house,...

Full description

Saved in:
Bibliographic Details
Main Authors: Hyeongwon Cho, Soongyu Kang, Yunseong Sim, Seongjoo Lee, Yunho Jung
Format: Article
Language:English
Published: MDPI AG 2025-01-01
Series:Applied Sciences
Subjects:
Online Access:https://www.mdpi.com/2076-3417/15/2/546
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1832589243510161408
author Hyeongwon Cho
Soongyu Kang
Yunseong Sim
Seongjoo Lee
Yunho Jung
author_facet Hyeongwon Cho
Soongyu Kang
Yunseong Sim
Seongjoo Lee
Yunho Jung
author_sort Hyeongwon Cho
collection DOAJ
description Accidents caused by falls among the elderly have become a significant social issue, making fall detection systems increasingly needed. Fall detection systems such as internet of things (IoT) devices must be affordable and compact because they must be installed in various locations around the house, such as bedrooms, living rooms, and bathrooms. In this study, we propose a lightweight fall detection method using a continuous-wave (CW) radar sensor and a binarized neural network (BNN) to meet these requirements. We used a CW radar sensor, which is more affordable than other types of radar sensors, and employed a BNN with binarized features and parameters to reduce memory usage and make the system lighter. The proposed method distinguishes movements using micro-Doppler signatures, and spectrogram is binarized as an input to the BNN. The proposed method achieved 93.1% accuracy in binary classification of five fall actions and six non-fall actions. The memory requirements for storing parameters were reduced to 11.9 KB, representing a reduction of up to 99.9% compared with previous studies.
format Article
id doaj-art-26a0388e5d3f4d319437cc33ed06ef6e
institution Kabale University
issn 2076-3417
language English
publishDate 2025-01-01
publisher MDPI AG
record_format Article
series Applied Sciences
spelling doaj-art-26a0388e5d3f4d319437cc33ed06ef6e2025-01-24T13:19:46ZengMDPI AGApplied Sciences2076-34172025-01-0115254610.3390/app15020546Fall Detection Based on Continuous Wave Radar Sensor Using Binarized Neural NetworksHyeongwon Cho0Soongyu Kang1Yunseong Sim2Seongjoo Lee3Yunho Jung4School of Electronics and Information Engineering, Korea Aerospace University, Goyang 10540, Republic of KoreaDepartment of Smart Air Mobility, Korea Aerospace University, Goyang 10540, Republic of KoreaDepartment of Smart Air Mobility, Korea Aerospace University, Goyang 10540, Republic of KoreaDepartment of Electrical Engineering, Sejong University, Seoul 05006, Republic of KoreaSchool of Electronics and Information Engineering, Korea Aerospace University, Goyang 10540, Republic of KoreaAccidents caused by falls among the elderly have become a significant social issue, making fall detection systems increasingly needed. Fall detection systems such as internet of things (IoT) devices must be affordable and compact because they must be installed in various locations around the house, such as bedrooms, living rooms, and bathrooms. In this study, we propose a lightweight fall detection method using a continuous-wave (CW) radar sensor and a binarized neural network (BNN) to meet these requirements. We used a CW radar sensor, which is more affordable than other types of radar sensors, and employed a BNN with binarized features and parameters to reduce memory usage and make the system lighter. The proposed method distinguishes movements using micro-Doppler signatures, and spectrogram is binarized as an input to the BNN. The proposed method achieved 93.1% accuracy in binary classification of five fall actions and six non-fall actions. The memory requirements for storing parameters were reduced to 11.9 KB, representing a reduction of up to 99.9% compared with previous studies.https://www.mdpi.com/2076-3417/15/2/546fall detectioninternet of thingslightweightcontinuous wave radarshort-time Fourier transformmicro-Doppler signature
spellingShingle Hyeongwon Cho
Soongyu Kang
Yunseong Sim
Seongjoo Lee
Yunho Jung
Fall Detection Based on Continuous Wave Radar Sensor Using Binarized Neural Networks
Applied Sciences
fall detection
internet of things
lightweight
continuous wave radar
short-time Fourier transform
micro-Doppler signature
title Fall Detection Based on Continuous Wave Radar Sensor Using Binarized Neural Networks
title_full Fall Detection Based on Continuous Wave Radar Sensor Using Binarized Neural Networks
title_fullStr Fall Detection Based on Continuous Wave Radar Sensor Using Binarized Neural Networks
title_full_unstemmed Fall Detection Based on Continuous Wave Radar Sensor Using Binarized Neural Networks
title_short Fall Detection Based on Continuous Wave Radar Sensor Using Binarized Neural Networks
title_sort fall detection based on continuous wave radar sensor using binarized neural networks
topic fall detection
internet of things
lightweight
continuous wave radar
short-time Fourier transform
micro-Doppler signature
url https://www.mdpi.com/2076-3417/15/2/546
work_keys_str_mv AT hyeongwoncho falldetectionbasedoncontinuouswaveradarsensorusingbinarizedneuralnetworks
AT soongyukang falldetectionbasedoncontinuouswaveradarsensorusingbinarizedneuralnetworks
AT yunseongsim falldetectionbasedoncontinuouswaveradarsensorusingbinarizedneuralnetworks
AT seongjoolee falldetectionbasedoncontinuouswaveradarsensorusingbinarizedneuralnetworks
AT yunhojung falldetectionbasedoncontinuouswaveradarsensorusingbinarizedneuralnetworks