SLIDE 41 Bayesian fusion of multi-band images Gaussian prior modeling...
Quantitative results (AVIRIS dataset) Table : Performance of HS+MS fusion methods in terms of: RSNR (db), UIQI, SAM (deg) and DD(×10−2). Methods RSNR UIQI SAM DD Time(s) MAP 2 23.33 0.9913 5.05 4.87 1.6 Wavelet 3 25.53 0.9956 3.98 3.89 31 Proposed 26.74 0.9966 3.40 3.33 530 Advantages
◮ Samples generated by the proposed method can be used to compute
uncertainties about the estimates (confidence interval)
◮ Generalization to more complex problems (non-Gaussianities,
endmember uncertainty, etc)
◮ Noise variance estimation
2Hardie et al., Application of the Stochastic Mixing Model to Hyperspectral Resolution
Enhancement, IEEE Trans. Image Process., vol. 13, no. 9, pp. 11741184, Sept. 2004.
3Zhang et al., Noise-Resistant Wavelet-Based Bayesian Fusion of Multispectral and
Hyperspectral Images, IEEE Trans. Geosci. and Remote Sens., vol. 47, no. 11, Nov. 2009.
Nicolas Dobigeon Winter School “Search for Latent Variables”, Feb. 2-4 2015 28 / 67