On track fusion with communication constraints

Huimin Chen, X. Li
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引用次数: 16

Abstract

Distributed Kalman filters are often used in multisensor target tracking where the fusion center receives local estimates and fuses them to obtain the global target state estimate. With such a fusion architecture, each local tracker can communicate less frequently with the fusion center than the local filter update rate. The global target state estimate via track fusion is usually less accurate than that of the centralized estimator when local estimation errors are correlated and local trackers communicate to the fusion center with bandwidth constraints lower than the measurement rate. This paper focuses on the tradeoff between bandwidth and tracking accuracy for track fusion with communication constraints. We show that the performance degradation increases for track fusion on demand compared with the centralized estimator as the number of local trackers increases. We relate the steady state analysis of track fusion under bandwidth constraints to noisy Wyner-Ziv source coding problem and compare our results with the theoretical rate distortion curve of the quadratic Gaussian CEO problem. We conclude that track fusion on demand is a side-information unaware strategy while the awareness of the correlated estimation errors at each local tracker can improve the track fusion accuracy significantly.
具有通信约束的轨道融合
分布式卡尔曼滤波器常用于多传感器目标跟踪中,融合中心接收局部估计并融合得到全局目标状态估计。在这种融合架构下,每个本地跟踪器与融合中心的通信频率低于本地过滤器的更新频率。当局部估计误差存在相关性且局部跟踪器与融合中心的通信带宽约束低于测量速率时,通过航迹融合进行全局目标状态估计的精度通常低于集中式估计。研究了在通信约束下航迹融合中带宽与跟踪精度的权衡问题。研究表明,随着局部跟踪器数量的增加,随需融合的性能下降比集中式估计器增加。我们将带宽约束下航迹融合的稳态分析与噪声wner - ziv源编码问题联系起来,并将结果与二次高斯CEO问题的理论速率失真曲线进行了比较。结果表明,航迹融合是一种不了解侧信息的策略,而对每个局部跟踪器的相关估计误差进行感知可以显著提高航迹融合的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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