Classification of Stroke and Non-Stroke Patients from Human Body Movements using Smartphone Videos and Deep Neural Networks
Informasi
JurnalProceedings - ICACSIS 2022: 14th International Conference on Advanced Computer Science and Information Systems
PenerbitInstitute of Electrical and Electronics Engineers Inc.
Halaman187 - 192
Tahun Publikasi2022
ISBN978-166548936-2
Jenis SumberScopus
Sitasi
Scopus: 5
Google Scholar: 5
PubMed: 5
Abstrak
This study covers a pilot study on developing a tele-health system for detection and classification of stroke and non-stroke patients from human body movements using smartphone videos. Human body poses are extracted from smartphone videos which are then transformed into RGB images and classified into either stroke (positive) or non-stroke (negative) labels. We tested PoseNet, BlazePose, and MoveNet for human body pose detection and AlexN et and SqueezeN et for classification. From this pilot study, we found that MoveNet is the best human body pose detection while AlexNet is the best for classification. © 2022 IEEE.
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