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A basic study of activity type detection and energy expenditure estimation for children and youth in daily life using 3-axis accelerometer and 3-stage cascaded artificial neural network

机译:基于三轴加速度计和三级级联人工神经网络的儿童和青少年日常生活中活动类型检测和能量消耗估算的基础研究

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It is important to prevent obesity in childhood given that many obese adults have been obese since childhood. An activity monitor could provide an effective aid in preventing obesity if it records not only the calorie assessment but also activity detection to check how active a child is in daily life. The current study is for activity monitoring algorithm and we designed 3-stage cascaded artificial neural network. To develop the algorithm, we recruited 76 participants, made 3-axis accelerometer for them, and acquired activity data and calorie consumption data through them. Finally, we designed 3-stage cascaded network to classify the activities and to assess energy consumption. The 3-stage network classifies 4 activities of walking, running, stairs moving, and jumping rope with overall accuracy of 94.70%, and predicts calorie consumption with average accuracy of 81.91%, which is better than the results of the 2-stage network. Future work would include the enhancement of the network performance.
机译:鉴于许多肥胖的成年人从童年时代就开始肥胖,因此预防童年时期的肥胖很重要。如果活动监测器不仅记录卡路里评估值,还记录活动检测以检查儿童在日常生活中的活跃程度,则可以提供预防肥胖的有效帮助。当前的研究是针对活动监控算法的,我们设计了三级级联人工神经网络。为了开发该算法,我们招募了76名参与者,为他们制作了3轴加速度计,并通过他们获取了活动数据和卡路里消耗数据。最后,我们设计了3级级联网络来对活动进行分类并评估能耗。 3级网络对步行,跑步,楼梯移动和跳绳这4个活动进行分类,总体精度为94.70%,预测卡路里消耗的平均精度为81.91%,这比2级网络的结果要好。未来的工作将包括增强网络性能。

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