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Depth-Camera-Based System for Estimating Energy Expenditure of Physical Activities in Gyms

机译:基于深度相机的体育活动能量消耗估算系统

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Energy expenditure (EE) monitoring is crucial to tracking physical activity (PA). Accurate EE monitoring may help people engage in adequate activity and therefore avoid obesity and reduce the risk of chronic diseases. This study proposes a depth-camera-based system for EE estimation of PA in gyms. Most previous studies have used inertial measurement units for EE estimation. By contrast, the proposed system can be used to conveniently monitor subjects' treadmill workouts in gyms without requiring them to wear any devices. A total of 21 subjects were recruited for the experiment. Subjects' skeletal data acquired using the depth camera and oxygen consumption data simultaneously obtained using the K4b(2) device were used to establish an EE predictive model. To obtain a robust EE estimation model, depth cameras were placed in the side view, rear side view, and rear view. A comparison of five different predictive models and these three camera locations showed that the multilayer perceptron model was the best predictive model and that placing the camera in the rear view provided the best EE estimation performance. The measured and predicted metabolic equivalents of task exhibited a strong positive correlation, with r = 0.94 and coefficient of determination r(2) = 0.89. Furthermore, the mean absolute error was 0.61 MET, mean squared error was 0.67 MET, and root mean squared error was 0.76 MET. These results indicate that the proposed system is handy and reliable for monitoring user's EE when performing treadmill workouts.
机译:能量消耗(EE)监控对于跟踪身体活动(PA)至关重要。准确的EE监测可以帮助人们进行适当的活动,从而避免肥胖并降低患慢性病的风险。这项研究提出了一种基于深度相机的系统,用于体育馆的EE估计。以前的大多数研究都使用惯性测量单位进行EE估算。相比之下,提出的系统可用于方便地监视受试者在健身房的跑步机锻炼情况,而无需他们佩戴任何设备。总共招募了21名受试者进行实验。使用深度相机获取的受试者骨骼数据和使用K4b(2)设备同时获取的氧气消耗数据用于建立EE预测模型。为了获得鲁棒的EE估计模型,将深度相机放置在侧视图,后侧视图和后视图中。对五个不同的预测模型以及这三个相机位置的比较表明,多层感知器模型是最佳的预测模型,而将相机置于后视图中则提供了最佳的EE估计性能。测量和预测任务的代谢当量表现出很强的正相关,r = 0.94,测定系数r(2)= 0.89。此外,平均绝对误差为0.61 MET,均方误差为0.67 MET,均方根误差为0.76 MET。这些结果表明,所提出的系统在进行跑步机锻炼时方便且可靠地用于监视用户的EE。

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