Debraj De, Wenzhan Song, Mingsen Xu, Cheng-Liang Wang, D. Cook, X. Huo
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引用次数: 50
摘要
本文提出并设计了一种智能环境下的实时用户跟踪系统——Finding Human Motion (Finding Human Motion)。FindingHuMo可以从非侵入性和匿名(非用户特定)二进制运动传感器数据流中对走廊环境中的多个(未知和可变数量)用户执行无设备跟踪。本设计系统的意义在于:(a)从基础设施中静态无线传感器网络的二进制运动数据流中快速跟踪单个目标。这需要解决不可靠的节点序列,系统噪声和路径模糊。(b)多用户跟踪的缩放,其中用户运动轨迹可能以所有可能的方式相互交叉。这需要解决路径歧义以隔离重叠轨迹,FindingHumo在收集的运动数据流上应用以下技术:(i)提出的运动数据驱动的自适应阶隐马尔可夫模型与Viterbi解码(称为adaptive - hmm),然后(ii)创新的路径消歧算法(称为CPDA)。使用这种方法,系统可以准确地检测和隔离单个用户的运动轨迹。系统性能用智能环境下实时系统部署经验的结果来说明。
FindingHuMo: Real-Time Tracking of Motion Trajectories from Anonymous Binary Sensing in Smart Environments
In this paper we have proposed and designed FindingHuMo (Finding Human Motion), a real-time user tracking system for Smart Environments. FindingHuMo can perform device-free tracking of multiple (unknown and variable number of) users in the Hallway Environments, just from non-invasive and anonymous (not user specific) binary motion sensor data stream. The significance of our designed system are as follows: (a) fast tracking of individual targets from binary motion data stream from a static wireless sensor network in the infrastructure. This needs to resolve unreliable node sequences, system noise and path ambiguity, (b) Scaling for multi-user tracking where user motion trajectories may crossover with each other in all possible ways. This needs to resolve path ambiguity to isolate overlapping trajectories, FindingHumo applies the following techniques on the collected motion data stream: (i) a proposed motion data driven adaptive order Hidden Markov Model with Viterbi decoding (called Adaptive-HMM), and then (ii) an innovative path disambiguation algorithm (called CPDA). Using this methodology the system accurately detects and isolates motion trajectories of individual users. The system performance is illustrated with results from real-time system deployment experience in a Smart Environment.