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Depth-Camera Based Energy Expenditure Estimation System for Physical Activity Using Posture Classification Algorithm

机译:基于深度摄像机的能量支出估算系统用于使用姿势分类算法进行体育活动

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摘要

Insufficient physical activity is common in modern society. By estimating the energy expenditure (EE) of different physical activities, people can develop suitable exercise plans to improve their lifestyle quality. However, several limitations still exist in the related works. Therefore, the aim of this study is to propose an accurate EE estimation model based on depth camera data with physical activity classification to solve the limitations in the previous research. To decide the best location and amount of cameras of the EE estimation, three depth cameras were set at three locations, namely the side, rear side, and rear views, to obtain the kinematic data and EE estimation. Support vector machine was used for physical activity classification. Three EE estimation models, namely linear regression, multilayer perceptron (MLP), and convolutional neural network (CNN) models, were compared and determined the model with optimal performance in different experimental settings. The results have shown that if only one depth camera is available, optimal EE estimation can be obtained using the side view and MLP model. The mean absolute error (MAE), mean square error (MSE), and root MSE (RMSE) of the classification results under the aforementioned settings were 0.55, 0.66, and 0.81, respectively. If higher accuracy is required, two depth cameras can be set at the side and rear views, the CNN model can be used for light-to-moderate activities, and the MLP model can be used for vigorous activities. The RMSEs for estimating the EEs of standing, walking, and running were 0.19, 0.57, and 0.96, respectively. By applying the different models on different amounts of cameras, the optimal performance can be obtained, and this is also the first study to discuss the issue.
机译:在现代社会中,体育活动不足。通过估计不同体育活动的能源支出(EE),人们可以制定适当的锻炼计划,以提高他们的生活方式品质。但是,相关工程中仍存在若干限制。因此,本研究的目的是提出基于深度摄像机数据的精确EE估计模型,具有物理活动分类,以解决先前研究的限制。为了确定EE估计的最佳位置和相机的相机,三个位置设定了三个深度,即侧面,后侧和后视图,以获得运动学数据和EE估计。支持向量机用于物理活动分类。比较了三种EE估计模型,即线性回归,多层erceptron(MLP)和卷积神经网络(CNN)模型,并确定了不同实验设置中的最佳性能的模型。结果表明,如果只有一个深度相机可用,则可以使用侧视图和MLP模型获得最佳EE估计。上述设置下分类结果的平均绝对误差(MAE),均方误差(MSE)和根部MSE(RMSE)分别为0.55,0.66和0.81。如果需要更高的精度,可以在侧面和后视图中设置两个深度相机,CNN模型可用于光到中等的活动,并且MLP模型可用于剧烈活动。用于估计站立,行走和运行的EE的RMSE分别为0.19,0.57和0.96。通过在不同量的相机上应用不同的模型,可以获得最佳性能,这也是第一次讨论问题的研究。

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