使用智能手机视频和深度神经网络从人体运动中分类中风和非中风患者

Zafira Binta Feliandra, Siti Khadijah, M. F. Rachmadi, D. Chahyati
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引用次数: 3

摘要

本研究涵盖了一项开发远程医疗系统的试点研究,该系统使用智能手机视频从人体运动中检测和分类中风和非中风患者。从智能手机视频中提取人体姿势,然后将其转换为RGB图像,并将其分类为笔画(正面)或非笔画(负面)标签。我们测试了PoseNet, BlazePose和MoveNet用于人体姿势检测,AlexN et和SqueezeN et用于分类。从这个初步研究中,我们发现MoveNet是最好的人体姿势检测,AlexNet是最好的分类。
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Classification of Stroke and Non-Stroke Patients from Human Body Movements using Smartphone Videos and Deep Neural Networks
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.
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