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Efficient activity classification from motion inputs

机译:通过运动输入进行有效的活动分类

摘要

A device worn by a human performing a method using accelerometer data to classify human activities is disclosed. The method uses memory and computation efficiently. A stream of samples is divided into a sequence of sampling periods; each sample has an acceleration value for each axis (e.g., a 3-D accelerometer). Standard deviation of the values for each axis during each sampling period are calculated. A running sum of each axis' values can be maintained sample-by-sample. Each value is sorted into a bin of a histogram, by quantifying a deviance from a respective mean in standard deviations. A standard deviation produced from samples of a previous period can be used. The histogram is compared with histograms associated with particular activities and a classification output can be produced. Classification outputs from multiple sampling periods can be used for voting. A threshold amount of activity can be required to begin activity classification.
机译:公开了由人类佩戴的设备,该设备执行使用加速度计数据对人类活动进行分类的方法。该方法有效地使用了存储器和计算。样本流被分成一系列的采样周期。每个样本的每个轴都有一个加速度值(例如3-D加速度计)。计算每个采样周期内每个轴的值的标准偏差。每个轴值的运行总和可以逐个样本进行维护。通过量化与标准偏差中各自平均值的偏差,将每个值分类到直方图的bin中。可以使用前一时期的样本产生的标准偏差。将直方图与与特定活动关联的直方图进行比较,然后可以生成分类输出。来自多个采样周期的分类输出可用于投票。开始活动分类可能需要一定量的活动。

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