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Estimating Daily Energy Expenditure from Video for Assistive Monitoring

机译:从视频中估算每日能源支出以获得辅助监测

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Automatically estimating a person's energy expenditure has numerous uses, including ensuring sufficient daily activity by an elderly live-alone person, such activity shown to have numerous benefits. Most previous work requires a person to wear a sensor device. We introduce a video-based activity level estimation technique to take advantage of increasingly-common in-home camera systems. We consider several features of a motion bounding rectangle for such estimation, including changes in height and width, and vertical and horizontal velocities and accelerations. Experiments involved 36 recordings of normal household activity, such as reading while seated, sweeping, and light exercising, involving 4 different actors. Results show, somewhat surprisingly, that the feature horizontal acceleration leads to an activity level estimation fidelity of 0.994 correlation with a commercial BodyBugg body-worn energy measurement device. Furthermore, the approach yielded 90.9% average accuracy of energy expenditure.
机译:自动估计一个人的能源支出具有许多用途,包括通过老年人的生活人员确保充分的日常活动,这些活动显示出具有许多益处。最先前的工作需要一个人佩戴传感器设备。我们介绍了一种基于视频的活动级别估计技术,以利用日益常见的内部摄像机系统。我们考虑用于这种估计的运动边界矩形的若干特征,包括高度和宽度的变化,以及垂直和水平速度和加速度。实验涉及36个常规家庭活动的记录,如阅读,席卷和轻轻锻炼,涉及4个不同的演员。结果表明,有些令人惊讶的是,特征水平加速度导致活动水平估计保真度0.994与商业Bodybugg体磨损能量测量装置的相关性。此外,该方法产生了90.9%的能源支出精度。

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