Robust hyperspectral unmixing accounting for residual components

Abderrahim Halimi, Paul Honeine, Jose Bioucas-Dias
2016 2016 IEEE Statistical Signal Processing Workshop (SSP)  
This paper presents a new hyperspectral mixture model jointly with a Bayesian algorithm for supervised hyperspectral unmixing. Based on the residual component analysis model, the proposed formulation assumes the linear model to be corrupted by an additive term that accounts for mismodelling effects (ME). The ME formulation takes into account the effect of outliers, the propagated errors in the signal processing chain and copes with some types of endmember variability (EV) or nonlinearity (NL).
more » ... he known constraints on the model parameters are modeled via suitable priors. The resulting posterior distribution is optimized using a coordinate descent algorithm which allows us to compute the maximum a posteriori estimator of the unknown model parameters. The proposed model and estimation algorithm are validated on both synthetic and real images showing competitive results regarding the quality of the inferences and the computational complexity when compared to the state-of-the-art algorithms.
doi:10.1109/ssp.2016.7551848 dblp:conf/ssp/HalimiHB16 fatcat:xmwsd6qi2fbanlghzymph22roa