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Predicting Physical Activities from Accelerometer Readings in Spherical Coordinate System

机译:根据球坐标系中的加速度计读数预测体育活动

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Recent advances in mobile computing devices enable smart-phone an ability to sense and collect various possibly useful data from a wide range of its sensors. Combining these data with current data mining and machine learning techniques yields interesting applications which were not conceivable in the past. One of the most interesting applications is user activities recognition accomplished by analysing information from an accelerometer. In this work, we present a novel framework for classifying physical activities namely, walking, jogging, push-up, squatting and sit-up using readings from mobile phone's accelerometer. In contrast to the existing methods, our approach first converts the readings which are originally in Cartesian coordinate system into representations in spherical coordinate system prior to a classification step. Experimental results demonstrate that the activities involving rotational movements can be better differentiated by the spherical coordinate system.
机译:移动计算设备的最新进展使智能电话能够从其广泛的传感器中感测和收集各种可能有用的数据。将这些数据与当前的数据挖掘和机器学习技术相结合会产生有趣的应用程序,而这些应用程序在过去是无法想象的。最有趣的应用之一是通过分析来自加速度计的信息来完成用户活动识别。在这项工作中,我们提出了一个新颖的框架,用于使用手机加速度计的读数对步行,慢跑,俯卧撑,蹲下和仰卧起坐等身体活动进行分类。与现有方法相比,我们的方法首先在分类步骤之前将原始在笛卡尔坐标系中的读数转换为球坐标系中的表示形式。实验结果表明,通过球形坐标系可以更好地区分涉及旋转运动的活动。

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