Article ID Journal Published Year Pages File Type
528771 Information Fusion 2014 10 Pages PDF
Abstract

•The concept of correlation coefficient is introduced to represent the level of cross-correlation.•The rationality and effectiveness of the concept of correlation coefficient are verified.•A min–max estimation fusion model is proposed by minimizing the maximal Mahalanobis distance between two fused estimates.•A closed form of estimation fusion is derived by assuming that the correlation coefficient follows a prior distribution.

This paper addresses estimation fusion when the cross-correlation of local estimation errors is partially known. The statistical dependence of local estimation errors is first discussed, and then the concept of correlation coefficient is introduced to model the cross-correlation approximately. Two algorithms are proposed. One is based on min–max technique, which minimizes the maximal Mahalanobis distance between two fused estimates. The other one uses the prior distribution of the correlation coefficient and obtains a closed form of estimation fusion with the help of a series of matrix manipulations. Compared with some available algorithms in literature, simulation results demonstrate the effectiveness of the proposed approaches.

Related Topics
Physical Sciences and Engineering Computer Science Computer Vision and Pattern Recognition
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