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Explainable gait recognition with prototyping encoder-decoderExplainable gait recognition with prototyping encoder–decoder

Other Titles
Explainable gait recognition with prototyping encoder–decoder
Authors
Jucheol MoonYong-Min Shin박진덕Nelson Hebert MinayaWon-Yong ShinSang-Il Choi
Issue Date
Mar-2022
Publisher
PUBLIC LIBRARY SCIENCE
Keywords
Gait recognition; Smart insole; Neural network; Prototytping encoder-decoder; Interpretability
Citation
PLOS ONE, v.17, no.3, pp e0264783-1 - e0264783-20
Journal Title
PLOS ONE
Volume
17
Number
3
Start Page
e0264783-1
End Page
e0264783-20
URI
https://yscholarhub.yonsei.ac.kr/handle/2021.sw.yonsei/6769
DOI
10.1371/journal.pone.0264783
ISSN
1932-6203
Abstract
Human gait is a unique behavioral characteristic that can be used to recognize individuals. Collecting gait information widely by the means of wearable devices and recognizing people by the data has become a topic of research. While most prior studies collected gait information using inertial measurement units, we gather the data from 40 people using insoles, including pressure sensors, and precisely identify the gait phases from the long time series using the pressure data. In terms of recognizing people, there have been a few recent studies on neural network-based approaches for solving the open set gait recognition problem using wearable devices. Typically, these approaches determine decision boundaries in the latent space with a limited number of samples. Motivated by the fact that such methods are sensitive to the values of hyper-parameters, as our first contribution, we propose a new network model that is less sensitive to changes in the values using a new prototyping encoder-decoder network architecture. As our second contribution, to overcome the inherent limitations due to the lack of transparency and interpretability of neural networks, we propose a new module that enables us to analyze which part of the input is relevant to the overall recognition performance using explainable tools such as sensitivity analysis (SA) and layerwise relevance propagation (LRP).
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College of Science > 이과대학 수학 > 1. Journal Articles

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