基于粒子滤波的被动传感器动态目标关联

S. Cho, Jinseok Lee, Sangjin Hong
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引用次数: 3

摘要

本文对基于阈值的算法进行了改进和评价赵、李、洪,“基于无源传感器的无线传感器网络动态目标关联方法”,MWSCAS07和NEWCAS07, 2007年8月。]用于无线传感器网络中的动态数据关联。传感器节点包含RFID读取器和声学传感器,其中融合信号用于跟踪和关联多个对象。RFID标签用于识别物体,声学传感器用于估计物体的运动。为了获得更好的数据关联,我们采用粒子滤波对目标进行预测。采用粒子滤波的算法在偶数物体重叠的情况下,增加了关联情况。仿真结果与仅使用原始算法的仿真结果进行了比较。将单节点覆盖和多节点覆盖下的关联性能作为采样时间的函数进行评估。
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Passive sensor based dynamic object association with particle filtering
This paper develops and evaluates the threshold based algorithm proposed in [S.H. Cho, J. Lee, and S. Hong, "Passive Sensor Based Dynamic Object Association Method in Wireless Sensor Network," Proceedings of MWSCAS07 and NEWCAS07, Aug. 2007. ] for dynamic data association in wireless sensor networks. The sensor node incorporates RFID reader and acoustic sensor where the signals are fused for tracking and associating multiple objects. The RFID tag is used for object identification and acoustic sensor is used for estimating object movement. For the better data association, we apply the particle filtering for the prediction of an object. The algorithm with the particle filtering has an effect on increasing the association case where even objects overlap. The simulation result is compared to that using only the original algorithm. The association performance under single node coverage and multiple node coverage is evaluated as a function of sampling time.
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