基于贝叶斯多目标跟踪和传感器定位的协同传感器网络

G. Jajamovich, Xiaodong Wang
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引用次数: 1

摘要

我们提出了一种方法来跟踪未知和可变数量的目标,而不假设网络中传感器节点的位置是已知的。然后,联合进行多目标跟踪和传感器节点定位。针对传感器网络对低功耗的要求,提出了一种只有一小部分传感器处于活动状态而其他传感器处于空闲状态的协同估计方案。该方法基于rao - blackwell化序贯蒙特卡罗(SMC)方法,利用了未知变量的状态空间是可分离的这一事实。然后这个问题被分成两部分。一是生成样本来估计目标数量,并解决测量值与目标之间的关联不确定度;第二个问题是一个多目标跟踪问题,可以对每个样本使用无气味卡尔曼滤波器来解决。仿真结果表明,该方法不仅可以跟踪多个目标,而且可以准确估计传感器节点的未知位置。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Collaborative sensor networks with Bayesian Multitarget Tracking and Sensor Localization
We propose a method to track an unknown and variable number of targets without assuming the knowledge of the locations of the sensor nodes in the network. Then, the multitarget tracking and the localization of sensor nodes is performed jointly. As low-power consumption is a requirement in sensor networks, a collaborative estimation scheme is presented, where only a small set of sensors are active while the others remain in an idle state. The proposed technique is based on a Rao-Blackwellized sequential Monte Carlo (SMC) method that takes advantage of the fact that the state space of the unknown variables is separable. The problem is then divided in two parts. The first one generates samples to estimate the number of targets and solves the association uncertainty between measurements and targets; while the second one is a multiple target tracking problem that can be solved with a unscented Kalman filter for each sample. It is shown through simulations that it is possible to track the multiple targets and also get accurate estimates of the unknown locations of the sensor nodes.
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