从深度传感器数据评估康复训练

Shehzan Haider Chowdhury, Murshed Al Amin, A. M. Rahman, M. A. Amin, A. Ali
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引用次数: 4

摘要

评估康复训练在手术后各种肌肉骨骼疾病的恢复和治疗中是必不可少的。据报道,超过90%的康复训练是在家庭环境中进行的。随着患者数量的增加,这种方法变得非常昂贵。为家庭康复提供技术支持是解决这一问题的极好方法。病人呆在家里,在摄像头前做练习,录像或数据会被发送给医生,让医生对练习做出评价。在本文中,我们提出了两个基于机器学习的模型来评估由kinect 3D传感器捕获的数据的练习质量。该模型由一个长短期记忆(LSTM)网络组成,该网络使用时间序列骨骼数据来预测练习的质量。第一个模型使用医生提出的预定义特征。对于第二个模型,我们在骨骼数据上使用图卷积网络(GCN)提取特征,其中每个节点代表身体的一个部位或关节,边缘代表身体部位之间的连接。我们得出结论,当使用GCN特征时,LSTM在预测结果方面更准确。
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Assessment of Rehabilitation Exercises from Depth Sensor Data
Assessing the rehabilitation exercises are essential in the recovery and treatment of various musculoskeletal conditions following surgery. According to reports, over 90% of all rehabilitative exercise sessions are conducted in a home environment. As the number of patients grows, this method becomes prohibitively expensive. Providing technology support for home-based rehabilitation is an excellent approach to address this. The patient remains at home and does the exercises in front of the camera, with the footage or data being sent to the physician for comments on the exercises. In this paper, we propose two machine learning-based models to assess the quality of exercises where the data is captured by such kinect 3D sensors. The proposed models consist of a long short-term memory(LSTM) network which uses the time series skeletal data to predict the quality of the exercises. The first model uses the predefined features proposed by the physicians. For the second model, we extract features using graph convolutional network(GCN) on the skeletal data where each node represents a body part or joint in the body and the edges represent the connection between the body parts. We conclude that LSTM is more accurate at predicting the results when GCN features are used.
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