基于隐马尔可夫模型的计算RFID人体活动识别

Guibing Hu, Xue-song Qiu, Luoming Meng
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引用次数: 4

摘要

RFID被广泛应用于室内环境的人类活动识别,例如老年人护理。通过原始RFID数据分析获得洞察力是人类活动识别系统的关键部分。然而,RFID数据中不可侵犯的不确定性,包括外部环境噪声和碎片读取(读取冲突),增加了其在高级应用中广泛采用的难度。为了解决这些问题,本文提出了一种基于隐马尔可夫模型的数据分析方法,与以往的研究相比,该方法减少了对RFID放置的限制,只需要少量的先验知识,该方法从RFID原始数据中学习并应用于数据分析。我们的方法分析了从人体运动识别中收集的RFID RSSI和3d加速度计数据,以克服上述问题。该系统已经建成,并成功部署在一个真实的实验室内。结果表明,该系统运行良好,获得了较低的误差率(2.5%)。
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Human activity recognition based on Hidden Markov Models using computational RFID
RFID is widely adopted for human activity recognition in interior environments, e.g., elder-caring. Gaining insight through raw RFID data analysis is the key part of the human activity recognition systems. However, the inviolable uncertainty in RFID data, including external environment noise and fragmentary reading (reading collision), increase the difficulty for high-level application widely adoption. In order to address these challenges, we proposing a Hidden Markov Models based data analysis approach in this paper, comparing with previous researches, our method need less limitations and requires only a few prior knowledge about RFID placing, the approach learns from raw RFID data and apply it to analyze the data. Our method analyzes RFID RSSI and 3D-accelerometer data collecting from human movement recognition to overcome aforementioned issues. This system has already been built and successfully deployed in a real experimental room. Result shows that the system run well to obtains an activity recognition with low error rate of 2.5%.
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