一种用于GMTI跟踪的变结构多模型粒子滤波器

M. Arulampalam, Neil Gordon, M. R. Orton, Branko Ristic
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引用次数: 106

摘要

近年来,利用GMTI传感器跟踪地面目标的问题受到了一些关注。除了标准的GMTI传感器测量外,人们还对使用非标准信息(如道路地图和与地形相关的能见度条件)来增强跟踪器的性能感兴趣。解决这一问题的传统方法是使用变结构IMM (VS-IMM),它使用方向过程噪声的概念来模拟沿着特定道路的运动。本文提出了一种基于粒子滤波的方法来解决这一问题,我们称之为变结构多模型粒子滤波(VS-MMPF)。仿真结果表明,VS-MMPF的性能明显优于VS-IMM。
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A variable structure multiple model particle filter for GMTI tracking
The problem of tracking ground targets with GMTI sensors has received some attention in the recent past. In addition to standard GMTI sensor measurements, one is interested in using non-standard information such as road maps, and terrain-related visibility conditions to enhance tracker performance. The conventional approach to this problem has been to use the variable structure IMM (VS-IMM), which uses the concept of directional process noise to model motion along particular roads. In this paper, we present a particle filter based approach to this problem which we call variable structure multiple model particle filter (VS-MMPF). Simulation results show that the performance of the VS-MMPF is much superior to that of VS-IMM.
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