Graphical Model-based Approaches to Target Tracking in Sensor Networks: An Overview of Some Recent Work and Challenges

Murat Uney, M. Çetin
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引用次数: 14

Abstract

Sensor networks have provided a technology base for distributed target tracking applications among others. Conventional centralized approaches to the problem lack scalability in such a scenario where a large number of sensors provide measurements simultaneously under a possibly non-collaborating environment. Therefore research efforts have focused on scalable, robust, and distributed algorithms for the inference tasks related to target tracking, i.e. localization, data association, and track maintenance. Graphical models provide a rigorous tool for development of such algorithms modeling the information structure of a given task and providing distributed solutions through message passing algorithms. However, the limited communication capabilities and energy resources of sensor networks pose the additional difficulty of considering the trade-off between the communication cost and the accuracy of the result. Also the network structure and the information structure are different aspects of the problem and a mapping between the physical entities and the information structure is needed. In this paper we discuss available formalisms based on graphical models for target tracking in sensor networks with a focus on the aforementioned issues. We point out additional constraints that must be asserted in order to achieve further insight and more effective solutions.
基于图形模型的传感器网络目标跟踪方法:近期研究综述与挑战
传感器网络为分布式目标跟踪应用提供了技术基础。在这种情况下,大量传感器可能在非协作环境下同时提供测量,传统的集中式方法缺乏可伸缩性。因此,研究工作集中在与目标跟踪相关的推理任务(即定位、数据关联和跟踪维护)的可扩展、鲁棒和分布式算法上。图形模型为开发这样的算法提供了一种严格的工具,可以对给定任务的信息结构进行建模,并通过消息传递算法提供分布式解决方案。然而,传感器网络有限的通信能力和能量资源给考虑通信成本和结果准确性之间的权衡带来了额外的困难。此外,网络结构和信息结构是问题的不同方面,需要在物理实体和信息结构之间建立映射。本文以上述问题为重点,讨论了基于图形模型的传感器网络目标跟踪的可用形式化方法。我们指出,为了获得更深入的见解和更有效的解决办法,必须确定其他约束条件。
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