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Applying neural network to VO2 estimation using 6-axis motion sensing data

机译:利用六轴运动感应数据将神经网络应用于VO2估计

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This paper focuses on oxygen consumption (VO2) estimation using 6-axis motion data (3-axis acceleration and 3-axis angular velocity) that are obtained from small motion sensors attached to people playing sports with different intensities. In order to achieve high estimation accuracy over a wide range of intensities of exercises, we apply neural network that is trained by experimental data consisting of the measured VO2 and motion sensing data of people with a wide range of intensities of exercises. We first investigate the gain brought by applying neural network by comparing its accuracy with an approach based on the linear regression model. Then, we analyze how much improvement the information on angular velocity can bring as compared with the estimation with the acceleration data alone. Our numerical results show that the employed framework exploiting neural network can improve the estimation accuracy in comparison to the linear regression model and the exploitation of information on the angular velocity plays an important role to improve the accuracy over higher intensities of exercises.
机译:本文着重于使用6轴运动数据(3轴加速度和3轴角速度)估算氧气消耗(VO2),这些数据是从与运动强度不同的人相连的小型运动传感器获得的。为了在广泛的运动强度下实现较高的估计精度,我们应用了由实验数据训练的神经网络,该实验数据由测得的VO2和具有广泛运动强度的人的运动感应数据组成。我们首先通过将神经网络的准确性与基于线性回归模型的方法进行比较,来研究应用神经网络带来的收益。然后,我们分析了与仅使用加速度数据进行估计相比,角速度信息可以带来多大的改进。我们的数值结果表明,与线性回归模型相比,采用神经网络的框架可以提高估计精度,并且角速度信息的开发对于提高高强度运动的准确性起着重要的作用。

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