On state estimation and fusion with elliptical constraints

Qiang Liu, N. Rao
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引用次数: 3

Abstract

We consider tracking of a target with elliptical nonlinear constraints on its motion dynamics. The state estimates are generated by sensors and sent over long-haul links to a remote fusion center for fusion. We show that the constraints can be projected onto the known ellipse and hence incorporated into the estimation and fusion process. In particular, two methods based on (i) direct connection to the center, and (ii) shortest distance to the ellipse are discussed. A tracking example is used to illustrate the tracking performance using projection-based methods with various fusers in a lossy long-haul tracking environment.
椭圆约束下的状态估计与融合
研究了具有椭圆非线性运动约束的目标跟踪问题。状态估计由传感器产生,并通过长途链路发送到远程聚变中心进行聚变。我们证明了约束可以被投影到已知的椭圆上,从而纳入到估计和融合过程中。特别讨论了基于(i)与中心直接连接和(ii)与椭圆最短距离的两种方法。通过一个跟踪实例,说明了在有耗长途跟踪环境下,利用投影法对各种引信进行跟踪的性能。
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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