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Ambulatory Energy Expenditure Estimation: A Machine Learning Approach

机译:动态能量消耗估算:一种机器学习方法

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This paper presents a machine learning approach for accurate estimation of energy expenditure using a fusion of accelerometer and heart rate sensing. To address short comings in existing off-the-shelf solutions, we designed Jog Falls, an end to end system for weight management in collaboration with physicians in India. This system is meant to enable people to accurately monitor their energy expenditure and intake and make educated tradeoffs to reach their weight goals. In this paper we describe the sensing components of Jog Falls and focus on the energy expenditure estimation algorithm. We present results from controlled experiments in the lab, as well results from a 15 participant user study over a period of 63 days. We show how our algorithm mitigates many of the issues in existing solutions and yields more accurate results.1
机译:本文提出了一种融合了加速度计和心率感测技术的,用于准确估算能量消耗的机器学习方法。为了解决现有现货解决方案的不足,我们与印度的医生合作设计了Jog Falls,这是一种端到端的体重管理系统。该系统旨在使人们能够准确地监控他们的能量消耗和摄入量,并进行有根据的权衡以达到他们的体重目标。在本文中,我们描述了Jog Falls的传感组件,并着重于能量消耗估算算法。我们介绍了实验室中受控实验的结果,以及在15天的时间里进行的15位参与者用户研究的结果。我们展示了我们的算法如何缓解现有解决方案中的许多问题并产生更准确的结果。1

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