论文标题
通过Cauchy-Schwarz的分歧
Efficient Sensor Management for Multitarget Tracking in Passive Sensor Networks via Cauchy-Schwarz Divergence
论文作者
论文摘要
本文为被动传感器网络中的多目标跟踪提供了一种有效的传感器管理方法。与主动传感器网络相比,由于被动传感的性质,被动传感器网络具有更大的不确定性。被动传感器网络中的多目标跟踪是具有挑战性的,因为多传感器的多目标融合问题很困难,并且必须在跟踪准确性和能源消耗或其他成本之间实现良好的权衡。为了解决这个问题,我们提出了一种有效的信息理论方法来管理传感器,以更好地跟踪未知和随时间变化的目标。这是通过两项主要技术创新来完成的。第一个是通过部分观察到的马尔可夫决策过程框架的基于信息的多传感器选择解决方案。 Cauchy-Schwarz的差异被用作从候选者依次选择信息传感器的标准。第二个是一种基于迭代 - 校正多传感器广义标记的多伯努利滤波器的新型双阶段融合策略。由于迭代 - 矫正器方案的性能受到传感器更新顺序的极大影响,因此首先按照迭代式 - 矫正器更新,根据Cauchy-Schwarz Divergence对其检测目标的能力进行排名。对传感器进行排名的计算成本可以忽略不计,因为在多传感器选择过程中计算了Cauchy-Schwarz的分歧。仿真结果验证了所提出的方法的有效性和效率。
This paper presents an efficient sensor management approach for multi-target tracking in passive sensor networks. Compared with active sensor networks, passive sensor networks have larger uncertainty due to the nature of passive sensing. Multi-target tracking in passive sensor networks is challenging because the multi-sensor multi-target fusion problem is difficult and sensor management is necessary to achieve good trade-offs between tracking accuracy and energy consumption or other costs. To address this problem, we present an efficient information-theoretic approach to manage the sensors for better tracking of the unknown and time-varying number of targets. This is accomplished with two main technical innovations. The first is a tractable information-based multi-sensor selection solution via a partially observed Markov decision process framework. The Cauchy-Schwarz divergence is used as the criterion to select informative sensors sequentially from the candidates. The second is a novel dual-stage fusion strategy based on the iterated-corrector multi-sensor generalized labeled multi-Bernoulli filter. Since the performance of the iterated-corrector scheme is greatly influenced by the order of sensor updates, the selected sensors are first ranked in order of their abilities to detect targets according to the Cauchy-Schwarz divergence, followed the iterated-corrector update. The computation costs of ranking the sensors are negligible, since the Cauchy-Schwarz divergence has been computed in the multi-sensor selection procedure. Simulation results validate the effectiveness and efficiency of the proposed approach.