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Layered hidden Markov models for real-time daily activity monitoring using body sensor networks

机译:分层的隐马尔可夫模型,可使用人体传感器网络实时监控日常活动

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This paper presents an inferring and training architecture for long-term and continuous daily activity monitoring using a wearable body sensor network. Energy efficiency and system adaptivity to wearers are two of the most important requirements of a body sensor network. This paper discusses a two-layered hidden Markov model (HMM) architecture for in-network data processing to achieve energy efficiency and model individualization. The bottom-layer HMM is used to process sensory data locally at each wireless sensor node to significantly reduce data transmissions. The top-layer HMM is utilized to find the activity sequence from the result of the local processing. This approach is energy efficient in that only the results of the decoding procedure in each node need to be transmitted rather than raw sensing data. Therefore, the volume of data are significantly reduced. When the algorithm is applied in online monitoring systems, the results of local processing are transmitted only upon hidden state changes. The top-layer processing uses "old data" of one sensor node when it does not receive a "new" result sequence of the local processing from that sensor node. The adaption to various wearers is also discussed, and the robustness of this classification system is depicted. Experiments of 19 activity sequences to be classified are taken by 5 subjects to evaluate the performance of this system.
机译:本文介绍了一种可推断的和培训的体系结构,用于使用可穿戴式人体传感器网络进行长期和连续的日常活动监视。能量效率和系统对佩戴者的适应性是人体传感器网络最重要的两个要求。本文讨论了用于网络内数据处理的两层隐藏马尔可夫模型(HMM)架构,以实现能源效率和模型个性化。底层HMM用于在每个无线传感器节点本地处理传感数据,以显着减少数据传输。顶层HMM用于从本地处理结果中查找活动序列。该方法是能量有效的,因为仅需要传输每个节点中的解码过程的结果,而不是原始感测数据。因此,数据量大大减少了。当该算法应用于在线监视系统时,仅在隐藏状态更改时才传输本地处理的结果。当顶层处理未从该传感器节点接收到本地处理的“新”结果序列时,它将使用该传感器节点的“旧数据”。还讨论了对各种穿戴者的适应性,并描述了该分类系统的鲁棒性。由5位受试者进行19个要分类的活动序列的实验,以评估该系统的性能。

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