基于微控制器实时活动分析的加速度计

Axel Czabke, Sebastian Marsch, T. Lüth
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引用次数: 31

摘要

本文提出了一种基于三轴加速度计的人体运动分类算法。就活动模式的长期监视而言,重要的是要使数据量尽可能小,并使用有效的数据处理。因此,这项工作的目的是提供一种算法,实时地对“休息”、“散步”、“跑步”和“未知活动”进行分类。使用这种方法,无需对原始数据进行内存密集型存储。每当活动的状态发生变化时,一个unix时间戳和新的活动状态,以及在最后一个活动期间所采取的步数将被存储到外部闪存中。与大多数基于加速度计的方法不同,这种方法不依赖于传感器的特定位置,并且对于分类算法不需要一组训练数据。该算法在开发的设备Motionlogger上运行,该设备只有钥匙扣大小,可以不显眼地放在口袋或手提包里。该算法在10名受试者身上进行了测试,结果显示,平均准确率高于90%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Accelerometer based real-time activity analysis on a microcontroller
In this article we present a new algorithm implemented on a microcontroller for the classification of human physical activity based on a triaxial accelerometer. In terms of long term monitoring of activity patterns, it is important to keep the amount of data as small as possible and to use efficient data processing. Hence the aim of this work was to provide an algorithm that classifies the activities "resting", "walking", "running" and "unknown activity" in real-time. Using this approach memory intensive storing of raw data becomes unnecessary. Whenever the state of activity changes, a unix time stamp and the new state of activity, as well as the number of steps taken during the last activity period are stored to an external flash memory. Unlike most accelerometer based approaches this one does not depend on a certain positioning of the sensor and for the classification algorithm no set of training data is needed. The algorithm runs on the developed device Motionlogger which has the size of a key fob and can be worn unobtrusively in a pocket or handbag. The testing of the algorithm with 10 subjects wearing the Motionlogger in their pockets resulted in an average accuracy higher than 90%.
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