Fusion of Vegetation Indices Using Continuous Belief Functions and Cautious-Adaptive Combination Rule

The goal of this paper is to propose a methodology based on vegetation index fusion to provide an accurate estimation of the fraction of vegetation cover (fCover). Because of the partial and imprecise nature of remote-sensing data, we opt for the evidential framework that allows us to handle such ki...

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Veröffentlicht in:IEEE transactions on geoscience and remote sensing 2008-05, Vol.46 (5), p.1499-1513
Hauptverfasser: Kallel, A., Le Hegarat-Mascle, S., Hubert-Moy, L., Ottle, C.
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Sprache:eng
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Zusammenfassung:The goal of this paper is to propose a methodology based on vegetation index fusion to provide an accurate estimation of the fraction of vegetation cover (fCover). Because of the partial and imprecise nature of remote-sensing data, we opt for the evidential framework that allows us to handle such kind of information. The defined fCover belief functions are continuous with the interval [0,1] as a discernment space. Since the vegetation indices are not independent (e.g., perpendicular vegetation index and weighted difference vegetation index are linearly linked), we define a new combination rule called "cautious adaptive" to handle the partial "nondistinctness" between the sources (vegetation indices). In this rule, the "nondistinctness" is modeled by a factor rho varying from zero (distinct sources) to one (totally correlated sources), and the fusion rule varies accordingly from the conjunctive rule to the cautious one. In terms of results, both in the cases of simulated data and actual data, we show the interest of the combination of two or three vegetation indices to improve either the accuracy of fCover estimation or its robustness.
ISSN:0196-2892
1558-0644
DOI:10.1109/TGRS.2008.916215