分散大型传感器网络中的随机有限集多目标跟踪

Lingfei Su, Xiwang Dong, Yongzhao Hua, Jianglong Yu, Z. Ren
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摘要

研究了分布式大型传感器网络中的多目标跟踪问题。设计了一种基于随机有限集(RFS)的框架,包括改进的高斯混合概率假设密度滤波器(GM-PHD)和改进的广义协方差交集(GCI)融合算法。对于局部GM-PHD滤波器,通过对测量集进行预分割来初始化新生目标的强度,以解决测量原点的不确定性和大规模测量的计算负担。然后,建立了基于传感器节点的杂波模型,解决了分散结构带来的基数估计过高问题。对于本文提出的融合算法,即对GM-PHD滤波器生成的后验博士进行分布式融合,其思想是通过算法平均(AA)融合来补偿大规模融合资源情况下GCI严重的漏检问题。这样,可以充分利用GCI和AA来保证对共同目标的估计精度,对排他目标的估计鲁棒性。对一个分散的大规模网络进行了仿真,证明了该框架在估计精度和计算成本方面的有效性。
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Multi-target Tracking with Random Finite Set in Decentralized Large-scale Sensor Networks
This paper presents the multi-target tracking (MTT) problem in decentralized large-scale sensor networks. A novel random finite set (RFS)-based framework is designed, including an improved Probability Hypothesis Density filter with Gaussian Mixture (GM-PHD) representation, and an improved Generalized Covariance Intersection (GCI) fusion algorithm. For the local GM-PHD filter, the intensity of new-born targets is initialized by pre-segmenting the measurement set to address the uncertainty of measurement origin and the computational burden of large-scale measurements. Then, a sensor node-dependent clutter model is established to deal with the cardinality overestimation problem brought by the decentralized structure. For the proposed fusion algorithm, i.e., fusing the posterior PHDs generated by the proposed GM-PHD filters in a distributed manner, it is based on the idea of compensating the severe missed detection problem of GCI in the case of large-scale fusing resources by arithmetic average (AA) fusion. In this way, GCI and AA can be fully utilized to guarantee the estimation accuracy for common targets and, respectively, the robustness for exclusive targets. A simulation of a decentralized large-scale network demonstrates the effectiveness of the proposed framework with respect to estimation accuracy and computational cost.
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