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A framework of transportation mode detection for people with mobility disability

Authors
Heo, JiwoongHwang, SungjinMoon, JucheolYou, JaehwanKim, HansungCha, JaehyukKim, Kwanguk
Issue Date
Sep-2025
Publisher
Taylor and Francis Ltd.
Keywords
Deep learning; mobility disability; smartphone; transportation mode detection
Citation
Journal of Intelligent Transportation Systems, v.29, no.5, pp 518 - 533
Pages
16
Indexed
SCIE
SSCI
SCOPUS
Journal Title
Journal of Intelligent Transportation Systems
Volume
29
Number
5
Start Page
518
End Page
533
URI
https://scholarworks.bwise.kr/hanyang/handle/2021.sw.hanyang/212833
DOI
10.1080/15472450.2024.2329901
ISSN
1547-2450
1547-2442
Abstract
Transportation mode detection (TMD) is an important computational technique that aids human life at the social and individual levels. However, previous studies on TMD were focused on people without mobility disabilities, and research involving people with mobility disability is limited. Therefore, this study aimed to provide a TMD framework for people with mobility disability. We propose a method for data acquisition, and acquired data pertaining to 120 participants including manual and electric wheelchairs for 15,350 min. We analyzed the acquired data to determine the characteristics of each transportation mode, and applied machine learning and deep learning models to TMD. Our results showed that a recurrent neural network, known as long short-term memory, could classify five transportation modes (still, manual wheelchair, electric wheelchair, subway, and car) for people with and without disabilities, with an accuracy of 96.17%. Our results will be beneficial for enhancing the quality of life and enabling the social inclusion of people with mobility disabilities.
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