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Journal ArticleDOI

An investigation into Kalman filter target tracking algorithms and their real time parallel transputer implementation

TLDR
This paper investigates the parallel implementation of tracking Kalman filters in both 2- and 3-D frames onto a range of transputer topologies to enable practical realisations and presents real-time implementation results.
Abstract
For target tracking applications, a Kalman filter is generally used to estimate the kinematic components of a manoeuvring target (position, velocity and acceleration) from noisy measurements. The tracking algorithm is selected according to a trade-off between its performance and real-time computational requirements when choosing the level of complexity of the model. According to the application, either a linear or a nonlinear Kalman filter algorithm can be used to track manoeuvring targets. However, although excellent accuracy estimates can be achieved with any chosen algorithm, it requires a huge amount of calculation thus making real-time processing impossible.This paper investigates the parallel implementation of tracking Kalman filters (EKF, GRF, LDKF and MGEKF) in both 2- and 3-D frames onto a range of transputer topologies to enable practical realisations. The partitioning strategies are highlighted, real-time implementation results are presented, and the relative speedup and efficiency are calculat...

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Citations
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Proceedings ArticleDOI

Notice of Violation of IEEE Publication Principles A parallel processing Kalman filter for spacecraft vehicle parameters estimation

TL;DR: The time comparison of the various methods is analyzed with respect to real-time spacecraft vehicle parameters estimation and a slight time reduction in the parallel Kalman filter has been observed compared with sequential method.
Journal ArticleDOI

Robust filtering with randomly delayed measurements and its application to ballistic target tracking in boost phase

TL;DR: The novel robust filtering named as Randomly Delayed High-degree Cubature Huber-based Filtering (RD-HCHF) is proposed, which is not only robust to the randomly delayed measurements, but also robust toThe glint noise.
Proceedings ArticleDOI

Generation of dual missile strategies using genetic algorithms

TL;DR: The dual RBFN laws are shown to outperform the two analytical laws and have a similar level of robustness and performance and robustness is demonstrated and compared to two modern guidance laws by simulation.
Proceedings ArticleDOI

Evolutionary generation of artificial neural network based guidance laws

TL;DR: Simulations results indicate the artificial neural network guidance law is more effective than a PN and a DGT based guidance law and has been demonstrated against synthetic targets with Radar Cross Sections.
References
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Book

Introduction to VLSI systems

Journal ArticleDOI

Estimating Optimal Tracking Filter Performance for Manned Maneuvering Targets

TL;DR: In this paper, an optimal Kalman filter has been derived for this purpose using a target model that is simple to implement and that represents closely the motions of maneuvering targets, using this filter, parametric tracking accuracy data have been generated as a function of target maneuver characteristics, sensor observation noise, and data rate and that permits rapid a priori estimates of tracking performance to be made when the target is to be tracked by sensors providing any combination of range, bearing, and elevation measurements.
Journal ArticleDOI

Application of state estimation to target tracking

TL;DR: In this article, a survey of problems and solutions in the area of target tracking is presented, including design tradeoffs, performance evaluation, and current issues, as well as current issues.