불균형을 유발하는 회전 및 전환 동작 감지 멀티모달 특징 기반 딥러닝을 통한 행동 인식

Other Titles
Detection of Imbalance-causing Turning and Motion Transitions in Activity Recognition via Multimodal Feature-based Deep Learning
Authors
김하연임윤섭김도익
Issue Date
2025-08
Publisher
한국정밀공학회
Citation
한국정밀공학회지, v.42, no.8, pp.649 - 656
Abstract
Human activity recognition (HAR) has been actively researched in fields such as healthcare to understand and analyze human behavior in human-robot interaction. However, most studies have struggled to recognize activities like turning and motion transitions, which are often associated with dynamic balance. Therefore, we propose a novel HAR approach using a single sensor to collect and early fuse motion and position data. The aim is to enhance the accuracy of motion classification for daily activities and those that cause imbalance, which have traditionally been difficult to recognize. We constructed a quarantine room environment for data collection and to evaluate the impact of the suggested features on behavior. Five deep learning models were trained and evaluated to identify the optimal model. The collected data was classified and analyzed by the selected model, which demonstrated an average accuracy of 98.96%.
Keywords
Human activity recognition; Indoor positioning system; Ambient assisted living; 지능형 병원; 지능형 집; 사람 행동 인식; 실내 위치추적 시스템; 전천후 생활보조; Smart hospital; Smart home
ISSN
1225-9071
URI
https://pubs.kist.re.kr/handle/201004/153128
DOI
10.7736/JKSPE.025.058
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KIST Article > Others
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