Joint target tracking and identification-Part I: sequential Monte Carlo model-based approaches

This paper deals with model-based approaches for joint target tracking and identification. In a Bayesian framework, parametric state-space model classes are introduced as a generalization of the widespread state-space models. In addition to the dynamic state, they include a hyper-parameter, which takes into account target features or behaviors. For such model classes, sequential Monte Carlo approaches, also known as particle filtering, provide a powerful tool to perform sequentially on-line estimation and model selection. The paper focuses on the ergodicity concern of fixed hyper-parameter estimation and model selection. Indeed, the infinite memory of such a system may lead to the particle filter degeneracy or divergence. It reviews various methods to solve this problem, from the common and basic trick of adding an artificial noise to more complex methods, such as the introduction of reversible jump Markov chain Monte Carlo moves.

[1]  E. Blasch,et al.  Ten Methods to Fuse GMTI and HRRR Measurements for Joint Tracking and Identification , 2004 .

[2]  Hans Driessen,et al.  Integrated tracking and classification: an application of hybrid state estimation , 2001, SPIE Optics + Photonics.

[3]  Michael I. Miller,et al.  Monte Carlo Techniques for Automated Target Recognition , 2001, Sequential Monte Carlo Methods in Practice.

[4]  P. Fearnhead MCMC, sufficient statistics and particle filters. , 2002 .

[5]  James Llinas,et al.  Handbook of Multisensor Data Fusion , 2001 .

[6]  Branko Ristic,et al.  Kalman Filter and Joint Tracking and Classification in the TBM framework , 2004 .

[7]  Walter R. Gilks,et al.  RESAMPLE-MOVE Filtering with Cross-Model Jumps , 2001, Sequential Monte Carlo Methods in Practice.

[8]  Arnaud Doucet,et al.  A survey of convergence results on particle filtering methods for practitioners , 2002, IEEE Trans. Signal Process..

[9]  Simon Maskell Joint Tracking of Manoeuvring Targets and Classification of Their Manoeuvrability , 2004, EURASIP J. Adv. Signal Process..

[10]  Subhash Challa,et al.  Joint target tracking and classification using radar and ESM sensors , 2001 .

[11]  A. Doucet,et al.  Sequential MCMC for Bayesian model selection , 1999, Proceedings of the IEEE Signal Processing Workshop on Higher-Order Statistics. SPW-HOS '99.

[12]  Branko Ristic,et al.  Kalman filter and joint tracking and classification based on belief functions in the TBM framework , 2007, Inf. Fusion.

[13]  Dominic S. Lee,et al.  A particle algorithm for sequential Bayesian parameter estimation and model selection , 2002, IEEE Trans. Signal Process..

[14]  Nando de Freitas,et al.  An Introduction to MCMC for Machine Learning , 2004, Machine Learning.

[15]  Christophe Andrieu,et al.  Sequential Monte Carlo Methods for Optimal Filtering , 2001, Sequential Monte Carlo Methods in Practice.

[16]  Thiagalingam Kirubarajan,et al.  Efficient particle filters for joint tracking and classification , 2002, SPIE Defense + Commercial Sensing.

[17]  P. Minvielle,et al.  Joint target tracking and identification. Part II. Shape video computing , 2005, 2005 7th International Conference on Information Fusion.

[18]  Neil J. Gordon,et al.  A tutorial on particle filters for online nonlinear/non-Gaussian Bayesian tracking , 2002, IEEE Trans. Signal Process..

[19]  Simon J. Godsill,et al.  On sequential Monte Carlo sampling methods for Bayesian filtering , 2000, Stat. Comput..

[20]  Branko Ristic,et al.  On target classification using kinematic data , 2004, Inf. Fusion.

[21]  Christophe Andrieu,et al.  Bayesian Computational Approaches to Model Selection , 2000 .

[22]  A. Doucet,et al.  Parameter estimation in general state-space models using particle methods , 2003 .

[23]  A. Farina,et al.  Joint tracking and identification algorithms for multisensor data , 2002 .

[24]  Geir Storvik,et al.  Particle filters for state-space models with the presence of unknown static parameters , 2002, IEEE Trans. Signal Process..

[25]  Pierre Moulin,et al.  A particle filtering approach to FM-band passive radar tracking and automatic target recognition , 2002, Proceedings, IEEE Aerospace Conference.

[26]  Nando de Freitas,et al.  Sequential Monte Carlo Methods in Practice , 2001, Statistics for Engineering and Information Science.