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Joint multiple target tracking and classification in collaborative sensor networks

机译:协同传感器网络中的联合多目标跟踪和分类

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We address the problem of jointly tracking and classifying several targets within a sensor network where false detections are present. In order to meet the requirements inherent to sensor networks such as distributed processing and low-power consumption, a collaborative signal processing algorithm is presented. At any time, for a given tracked target, only one sensor is active. This leader node is focused on a single target but takes into account the possible existence of other targets. It is assumed that the motion model of a given target belongs to one of several classes. This class-target dynamic association is the basis of our classification criterion. We propose an algorithm based on the sequential Monte Carlo (SMC) filtering of jump Markov systems to track the dynamic of the system and make the corresponding estimates. A novel class-based resampling scheme is developed in order to get a robust classification of the targets. Furthermore, an optimal sensor selection scheme based on the maximization of the expected mutual information is integrated naturally within the SMC target tracking framework. Simulation results are presented to illustrate the excellent performance of the proposed multitarget tracking and classification scheme in a collaborative sensor network.
机译:我们解决了联合跟踪和分类传感器网络中存在错误检测的多个目标的问题。为了满足传感器网络固有的要求,例如分布式处理和低功耗,提出了一种协作信号处理算法。在任何时候,对于给定的跟踪目标,只有一个传感器处于活动状态。该领导节点专注于单个目标,但考虑了其他目标的可能存在。假定给定目标的运动模型属于几种类别之一。这种类别目标动态关联是我们分类标准的基础。我们提出了一种基于跳跃马尔可夫系统的顺序蒙特卡洛(SMC)滤波的算法,以跟踪系统的动态并做出相应的估计。为了获得目标的鲁棒分类,开发了一种新颖的基于类的重采样方案。此外,基于预期互信息最大化的最佳传感器选择方案自然会集成在SMC目标跟踪框架内。仿真结果表明了所提出的多目标跟踪和分类方案在协作传感器网络中的优异性能。

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