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Towards accelerometry based static posture identification

机译:迈向基于加速度计的静态姿势识别

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摘要

Human activity classification has wide-spread applications ranging from human computer interaction to disease progression studies. In this paper we propose a body posture model based on the Euler angles of the torso, arms and legs. The Euler angles are computed based on data streams originating from a wireless Body Sensor Network (BSN) comprising of nine accelerometers. Thereafter they are used to reconstruct different body postures based on an unsupervised learning and clustering algorithm. We validate our algorithm by implementing a classification engine in Matlab, capable of classifying subtle changes in posture with 97% accuracy.
机译:人类活动分类具有广泛的应用范围,从人机交互到疾病进展研究。在本文中,我们提出了一种基于躯干,手臂和腿的欧拉角的身体姿势模型。基于源自包括九个加速度计的无线人体传感器网络(BSN)的数据流来计算欧拉角。此后,基于无监督的学习和聚类算法,将它们用于重构不同的身体姿势。我们通过在Matlab中实现分类引擎来验证算法,该引擎能够以97%的准确度对姿势中的细微变化进行分类。

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