Some remarks on Kalman filters for the multisensor fusion

Abstract Multisensor data fusion has found widespread application in industry and commerce. The purpose of data fusion is to produce an improved model or estimate of a system from a set of independent data sources. There are various multisensor data fusion approaches, of which Kalman filtering is one of the most significant. Methods for Kalman filter based data fusion includes measurement fusion and state fusion. This paper gives first a simple a review of both measurement fusion and state fusion, and secondly proposes two new methods of state fusion based on fusion procedures at the prediction and update level, respectively, of the Kalman filter. The theoretical derivation for these algorithms are derived. To illustrate their application, a simple example is performed to evaluate the proposed methods and compare their performance with the conventional state fusion method and measurement fusion methods.

[1]  Y. Bar-Shalom,et al.  On optimal track-to-track fusion , 1997, IEEE Transactions on Aerospace and Electronic Systems.

[2]  W. Ames Mathematics in Science and Engineering , 1999 .

[3]  F. Martinerie,et al.  Data fusion and tracking using HMMs in a distributed sensor network , 1997, IEEE Transactions on Aerospace and Electronic Systems.

[4]  J. A. Roecker,et al.  Comparison of two-sensor tracking methods based on state vector fusion and measurement fusion , 1988 .

[5]  Guanrong Chen,et al.  Kalman Filtering with Real-time Applications , 1987 .

[6]  Y. Bar-Shalom Tracking and data association , 1988 .

[7]  H. P. Wang,et al.  Multi-model adaptive Kalman filter design for manoeuvring target tracking , 1994 .

[8]  Mark R. Stevens,et al.  Precise matching of 3-D target models to multisensor data , 1997, IEEE Trans. Image Process..

[9]  Christopher J. Harris,et al.  Linearization and state estimation of unknown discrete-time nonlinear dynamic systems using recurrent neurofuzzy networks , 1999, IEEE Trans. Syst. Man Cybern. Part B.

[10]  Yakov Bar-Shalom,et al.  Multitarget-Multisensor Tracking: Principles and Techniques , 1995 .

[11]  Hugh Durrant-Whyte,et al.  Data Fusion and Sensor Management: A Decentralized Information-Theoretic Approach , 1995 .

[12]  Yaakov Bar-Shalom,et al.  The Effect of the Common Process Noise on the Two-Sensor Fused-Track Covariance , 1986, IEEE Transactions on Aerospace and Electronic Systems.

[13]  C. Chang,et al.  Kalman filter algorithms for a multi-sensor system , 1976, 1976 IEEE Conference on Decision and Control including the 15th Symposium on Adaptive Processes.

[14]  Ren C. Luo,et al.  Multisensor integration and fusion in intelligent systems , 1989, IEEE Trans. Syst. Man Cybern..

[15]  Stelios C. A. Thomopoulos,et al.  Distributed Fusion Architectures and Algorithms for Target Tracking , 1997, Proc. IEEE.

[16]  Yaakov Bar-Shalom,et al.  Estimation and Tracking: Principles, Techniques, and Software , 1993 .