Gait-based Frailty Assessment using Image Representation of IMU Signals and Deep CNN
- Authors
- Arshad, Muhammad Zeeshan; Jung, Dawoon; Park, Mina; Shin, Hyungeun; Kiml, Jinwook; Mun, Kyung-Ryoul
- Issue Date
- 2021-10
- Publisher
- IEEE
- Citation
- 43rd Annual International Conference of the IEEE-Engineering-in-Medicine-and-Biology-Society (IEEE EMBC), pp.1874 - 1879
- Abstract
- Frailty is a common and critical condition in elderly adults, which may lead to further deterioration of health. However, difficulties and complexities exist in traditional frailty assessments based on activity-related questionnaires. These can be overcome by monitoring the effects of frailty on the gait. In this paper, it is shown that by encoding gait signals as images, deep learning-based models can be utilized for the classification of gait type. Two deep learning models (a) SS-CNN, based on single stride input images, and (b) MS-CNN, based on 3 consecutive strides were proposed. It was shown that MS-CNN performs best with an accuracy of 85.1%, while SS-CNN achieved an accuracy of 77.3%. This is because MS-CNN can observe more features corresponding to stride-to-stride variations which is one of the key symptoms of frailty. Gait signals were encoded as images using STFT, CWT, and GAF. While the MS-CNN model using GAF images achieved the best overall accuracy and precision, CWT has a slightly better recall. This study demonstrates how image encoded gait data can be used to exploit the full potential of deep learning CNN models for the assessment of frailty.
- ISSN
- 1557-170X
- URI
- https://pubs.kist.re.kr/handle/201004/77327
- DOI
- 10.1109/EMBC46164.2021.9630976
- Appears in Collections:
- KIST Conference Paper > 2021
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