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ST-DeepGait: A Spatiotemporal Deep Learning Model for Human Gait Recognition

Human gait analysis presents an opportunity to study complex spatiotemporal data transpiring as co-movement patterns of multiple moving objects (i.e., human joints). Such patterns are acknowledged as movement signatures specific to an individual, offering the possibility to identify each individual...

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Autores principales: Konz, Latisha, Hill, Andrew, Banaei-Kashani, Farnoush
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9611396/
https://www.ncbi.nlm.nih.gov/pubmed/36298427
http://dx.doi.org/10.3390/s22208075
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author Konz, Latisha
Hill, Andrew
Banaei-Kashani, Farnoush
author_facet Konz, Latisha
Hill, Andrew
Banaei-Kashani, Farnoush
author_sort Konz, Latisha
collection PubMed
description Human gait analysis presents an opportunity to study complex spatiotemporal data transpiring as co-movement patterns of multiple moving objects (i.e., human joints). Such patterns are acknowledged as movement signatures specific to an individual, offering the possibility to identify each individual based on unique gait patterns. We present a spatiotemporal deep learning model, dubbed ST-DeepGait, to featurize spatiotemporal co-movement patterns of human joints, and accordingly classify such patterns to enable human gait recognition. To this end, the ST-DeepGait model architecture is designed according to the spatiotemporal human skeletal graph in order to impose learning the salient local spatial dynamics of gait as they occur over time. Moreover, we employ a multi-layer RNN architecture to induce a sequential notion of gait cycles in the model. Our experimental results show that ST-DeepGait can achieve recognition accuracy rates over 90%. Furthermore, we qualitatively evaluate the model with the class embeddings to show interpretable separability of the features in geometric latent space. Finally, to evaluate the generalizability of our proposed model, we perform a zero-shot detection on 10 classes of data completely unseen during training and achieve a recognition accuracy rate of 88% overall. With this paper, we also contribute our gait dataset captured with an RGB-D sensor containing approximately 30 video samples of each subject for 100 subjects totaling 3087 samples. While we use human gait analysis as a motivating application to evaluate ST-DeepGait, we believe that this model can be simply adopted and adapted to study co-movement patterns of multiple moving objects in other applications such as in sports analytics and traffic pattern analysis.
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spelling pubmed-96113962022-10-28 ST-DeepGait: A Spatiotemporal Deep Learning Model for Human Gait Recognition Konz, Latisha Hill, Andrew Banaei-Kashani, Farnoush Sensors (Basel) Article Human gait analysis presents an opportunity to study complex spatiotemporal data transpiring as co-movement patterns of multiple moving objects (i.e., human joints). Such patterns are acknowledged as movement signatures specific to an individual, offering the possibility to identify each individual based on unique gait patterns. We present a spatiotemporal deep learning model, dubbed ST-DeepGait, to featurize spatiotemporal co-movement patterns of human joints, and accordingly classify such patterns to enable human gait recognition. To this end, the ST-DeepGait model architecture is designed according to the spatiotemporal human skeletal graph in order to impose learning the salient local spatial dynamics of gait as they occur over time. Moreover, we employ a multi-layer RNN architecture to induce a sequential notion of gait cycles in the model. Our experimental results show that ST-DeepGait can achieve recognition accuracy rates over 90%. Furthermore, we qualitatively evaluate the model with the class embeddings to show interpretable separability of the features in geometric latent space. Finally, to evaluate the generalizability of our proposed model, we perform a zero-shot detection on 10 classes of data completely unseen during training and achieve a recognition accuracy rate of 88% overall. With this paper, we also contribute our gait dataset captured with an RGB-D sensor containing approximately 30 video samples of each subject for 100 subjects totaling 3087 samples. While we use human gait analysis as a motivating application to evaluate ST-DeepGait, we believe that this model can be simply adopted and adapted to study co-movement patterns of multiple moving objects in other applications such as in sports analytics and traffic pattern analysis. MDPI 2022-10-21 /pmc/articles/PMC9611396/ /pubmed/36298427 http://dx.doi.org/10.3390/s22208075 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Konz, Latisha
Hill, Andrew
Banaei-Kashani, Farnoush
ST-DeepGait: A Spatiotemporal Deep Learning Model for Human Gait Recognition
title ST-DeepGait: A Spatiotemporal Deep Learning Model for Human Gait Recognition
title_full ST-DeepGait: A Spatiotemporal Deep Learning Model for Human Gait Recognition
title_fullStr ST-DeepGait: A Spatiotemporal Deep Learning Model for Human Gait Recognition
title_full_unstemmed ST-DeepGait: A Spatiotemporal Deep Learning Model for Human Gait Recognition
title_short ST-DeepGait: A Spatiotemporal Deep Learning Model for Human Gait Recognition
title_sort st-deepgait: a spatiotemporal deep learning model for human gait recognition
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9611396/
https://www.ncbi.nlm.nih.gov/pubmed/36298427
http://dx.doi.org/10.3390/s22208075
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