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A Distributed Hidden Markov Model for Fine-grained Annotation in Body Sensor Networks

机译:用于体传感器网络的细粒度注释的分布式隐马尔可夫模型

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Human movement models often divide movements into parts. In walking the stride can be segmented into four different parts, and in golf and other sports, the swing is divided into section based on the primary direction of motion. When analyzing a movement, it is important to correctly locate the key events dividing portions. There exist methods for dividing certain actions using data from specific sensors. We introduce a generalized method for event annotation based on Hidden Markov Models. Genetic algorithms are used for feature selection and model parameterization. Further, collaborative techniques are explored. We validate this method on a walking dataset using inertial sensors placed on various locations on a human body. Our technique is computationally simple to allow it to run on resource constrained sensor nodes.
机译:人体运动模型通常将运动分成零件。在走路时,可以将步幅分成四个不同的部件,并且在高尔夫和其他运动中,摆动基于主动动方向分为截面。在分析移动时,重要的是正确地定位划分部分的关键事件。存在使用来自特定传感器的数据划分某些动作的方法。我们介绍了基于隐马尔可夫模型的事件注释的广义方法。遗传算法用于特征选择和模型参数化。此外,探索了协作技术。我们在步行数据集上使用惯性传感器在人体上的各个位置上验证该方法。我们的技术在计算上易于允许它在资源受限的传感器节点上运行。

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