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Easy-hardware-implementation MMPF for Maneuvering Target Tracking: Algorithm and Architecture

机译:用于机动目标跟踪的易于硬件实现的MMPF:算法和体系结构

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摘要

In this paper, we present an easy-hardware-implementation multiple model particle filter (MMPF) for maneuvering target tracking. In the proposed filter, the sampling importance resampling (SIR) filter typically used for nonlinear and/or non-Gaussian application is extended to incorporating multiple models that are composed of a constant velocity (CV) model and a “current” statistical (CS) model, and the Independent Metropolis Hasting (IMH) sampler is utilized for the resampling unit in each model. Compared with the bootstrap MMPF, the proposed MMPF requires no knowledge of models and model transition probabilities for different maneuvering motions, and keeps a constant number of particles per model at all times. This allows a regular pipelined hardware structure and can be implemented in hardware easily. Furthermore, using the IMH sampler for the resampling unit avoids the bottleneck introduced by the traditional systematic resampler and reduces the latency of the whole implementation. Simulation results indicate that the proposed filter has approximately equal tracking performance with the bootstrap MMPF. Hardware architecture of the IMH sampler and its corresponding sample unit are presented, and a parallel architecture consisting of CV model processing element (PE), CS model PE and a central unit (CU) is described. The proposed architecture is evaluated on a Xilinx Virtex-II Pro FPGA platform for a maneuvering target tracking application and the results show many advantages of the proposed MMPF over existing approaches in terms of efficiency, lower latency, and easy hardware implementation.
机译:在本文中,我们提出了一种用于操作目标跟踪的易于硬件实现的多模型粒子滤波器(MMPF)。在提出的滤波器中,通常用于非线性和/或非高斯应用的采样重要性重采样(SIR)滤波器被扩展为包含由恒速(CV)模型和“当前”统计(CS)组成的多个模型模型,并且将独立大都市黑斯廷(IMH)采样器用于每个模型中的重采样单元。与自举式MMPF相比,所提出的MMPF不需要了解模型以及不同机动运动的模型转换概率,并且可以始终保持每个模型的粒子数量恒定。这允许常规的流水线硬件结构,并且可以轻松地在硬件中实现。此外,将IMH采样器用于重采样单元可避免传统系统重采样器引入的瓶颈,并减少整个实现的延迟。仿真结果表明,所提出的滤波器具有与自举MMPF大致相同的跟踪性能。提出了IMH采样器及其对应的采样单元的硬件架构,并描述了由CV模型处理单元(PE),CS模型PE和中央单元(CU)组成的并行架构。拟议的架构在Xilinx Virtex-II Pro FPGA平台上进行了评估,可用于机动目标跟踪应用,结果表明,与现有方法相比,拟议的MMPF在效率,较低延迟和易于硬件实现方面具有许多优势。

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