cover image: Spline probability hypothesis density filter for nonlinear maneuvering target tracking / Rajiv Sithiravel ... [et al.].

20.500.12592/gzr5b3

Spline probability hypothesis density filter for nonlinear maneuvering target tracking / Rajiv Sithiravel ... [et al.].

2016

"The Probability Hypothesis Density (PHD) filter is an efficient algorithm for multitarget tracking in the presence of nonlinearities and/or non-Gaussian noise. The Sequential Monte Carlo (SMC) and Gaussian Mixture (GM) techniques are commonly used to implement the PHD filter. Recently, a new implementation of the PHD filter using B-splines with the capability to model any arbitrary density functions using only a few knots was proposed. The Spline PHD (SPHD) filter was found to be more robust than the SMC-PHD filter since it does not suffer from degeneracy and it was better than the GM-PHD implementation in terms of estimation accuracy, albeit with a higher computational complexity. In this paper, we propose a Multiple Model (MM) extension to the SPHD filter to track multiple maneuvering targets. Simulation results are presented to demonstrate the effectiveness of the new filter.--Abstract, p. 1743. Caption title. Includes bibliographical references. p. 1743-1750 : charts (mostly col.)
military technology navigation systems

Authors

Sithiravel, Rajiv.

Catalogue Number
D69-39/2016E-PDF
Department/Agency
Canada. Defence R&D Canada.
Departmental Catalogue Number
DRDC-RDDC-2016-N046
Published in
Ottawa
Rights
© His Majesty the King in Right of Canada, as represented by the Minister of Defence R&D Canada, 2016.
Source
Government of Canada
Subject
Military technology Navigation systems