Title :
Implementation Strategies for Hyperspectral Unmixing Using Bayesian Source Separation
Author :
Schmidt, Frédéric ; Schmidt, Albrecht ; Tréguier, Erwan ; Guiheneuf, Maël ; Moussaoui, Saïd ; Dobigeon, Nicolas
Abstract :
Bayesian positive source separation (BPSS) is a useful unsupervised approach for hyperspectral data unmixing, where numerical nonnegativity of spectra and abundances has to be ensured, such as in remote sensing. Moreover, it is sensible to impose a sum-to-one (full additivity) constraint to the estimated source abundances in each pixel. Even though nonnegativity and full additivity are two necessary properties to get physically interpretable results, the use of BPSS algorithms has so far been limited by high computation time and large memory requirements due to the Markov chain Monte Carlo calculations. An implementation strategy that allows one to apply these algorithms on a full hyperspectral image, as it is typical in earth and planetary science, is introduced. The effects of pixel selection and the impact of such sampling on the relevance of the estimated component spectra and abundance maps, as well as on the computation times, are discussed. For that purpose, two different data sets have been used: a synthetic one and a real hyperspectral image from Mars.
Keywords :
Bayes methods; Markov processes; Monte Carlo methods; geophysical techniques; source separation; BPSS algorithm; Bayesian source separation; Markov chain Monte Carlo calculation; Mars; hyperspectral unmixing; implementation strategy; numerical nonnegativity; Accuracy; Correlation; Estimation; Hyperspectral imaging; Pixel; Source separation; Bayesian estimation; computation time; hyperspectral imaging; implementation strategy; source separation;
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on
DOI :
10.1109/TGRS.2010.2062190