Abstract

Although Bayesian methods have been very effective for spatial-spectral analysis of hyperspectral imagery (HSI), they had not been fully explored for enhanced sub-pixel mapping (SPM) by simultaneously considering several key issues i.e., endmember variability, the discrete nature of subpixel class labels and the spatial information in HSI. Therefore, we propose a new Bayesian SPM method based on discrete endmember variability mixture model (DEMM) and Markov random field (MRF), which has three main characteristics. First, DEMM allows the advanced SPM by completely accounting for the endmember-abundance patterns of each pixel to accommodate the endmember variability, the discrete hidden class label field of subpixels while taking into account the noise heterogeneity effect. Second, the discrete class label field modeled by MRF together with the DEMM, which can be integrated into a novel Bayesian model to better exploit the spatial contextual and spectral information. Third, the resulting Bayesian model can be efficiently solved by a designed expectation-maximization (EM) iteration, where E-step estimates the subpixel class label field using a simulated annealing (SA) algorithm and M-step estimates the endmembers for each pixel in HSI using alternating nonnegative least squares (ANLS) approach. The experimental results on three HSI datasets demonstrate that the proposed approach outperforms previously available SPM techniques.

Full Text
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