Improved multitarget tracking in clutter using bearings-only measurements
Keywords: 
Bearings-only
Multitarget tracking
Measurement-origin-uncertainty
Measurement nonlinearity
Gaussian mixture measurements-cardinality probability hypothesis density
Issue Date: 
2018
Publisher: 
MDPI AG
ISSN: 
1424-8220
Note: 
This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
Citation: 
Shi, Y. (Yifang); Xue, M. (Mengfan); Ding, Y. (Yuemin); et al. "Improved multitarget tracking in clutter using bearings-only measurements". Sensors. 18 (6), 2018, 1772
Abstract
Multitarget tracking in clutter using bearings-only measurements is a challenging problem. In this paper, a performance improved nonlinear filter is proposed on the basis of the Random Finite Set (RFS) theory and is named as Gaussian mixture measurements-based cardinality probability hypothesis density (GMMbCPHD) filter. The GMMbCPHD filter enables to address two main issues: measurement-origin-uncertainty and measurement nonlinearity, which constitutes the key problems in bearings-only multitarget tracking in clutter. For the measurement-origin-uncertainty issue, the proposed filter estimates the intensity of RFS of multiple targets as well as propagates the posterior cardinality distribution. For the measurement-origin-nonlinearity issue, the GMMbCPHD approximates the measurement likelihood function using a Gaussian mixture rather than a single Gaussian distribution as used in extended Kalman filter (EKF). The superiority of the proposed GMMbCPHD are validated by comparing with several state-of-the-art algorithms via intensive simulation studies.

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