Title :
PSO-EM: A Hyperspectral Unmixing Algorithm Based On Normal Compositional Model
Author :
Bing Zhang ; Lina Zhuang ; Lianru Gao ; Wenfei Luo ; Qiong Ran ; Qian Du
Author_Institution :
Key Lab. of Digital Earth Sci., Inst. of Remote Sensing & Digital Earth, Beijing, China
Abstract :
A new hyperspectral unmixing algorithm is proposed based on the normal compositional model (NCM) to estimate the endmembers and abundance parameters jointly in this paper. The NCM considers the hyperspectral imaging as a stochastic process and interprets each pixel value as a random vector, which is linearly mixed by the endmembers. More precisely, these endmembers are also treated as random variables as opposed to deterministic values in order to capture spectral variability that is not well described by the linear mixing model (LMM). However, the higher complexity of such an unmixing model leads to more difficulty in parameter estimation. A particle swarm optimization-expectation maximization (PSO-EM) algorithm, a “winner-take-all” version of the EM, is proposed to solve the parameter estimation problem, which employs a partial E step. The main contribution of the proposed PSO-EM is making optimum use of particle swarm optimization method (PSO) in the partial E step, which solves the difficulty of the integrals in the NCM model. The performance of the proposed methodology is evaluated through synthetic and real data experiments. Our obtained results demonstrate the superior performance of PSO-EM compared to other NCM-based as well as LMM-based methods.
Keywords :
expectation-maximisation algorithm; geophysical image processing; hyperspectral imaging; parameter estimation; particle swarm optimisation; random processes; stochastic processes; LMM; NCM model; PSO-EM algorithm; abundance parameter estimation; endmember parameter estimation; hyperspectral imaging; hyperspectral unmixing algorithm; linear mixing model; normal compositional model; particle swarm optimization-expectation maximization; random variables; random vector; spectral variability; stochastic process; Covariance matrices; Hyperspectral imaging; Parameter estimation; Particle swarm optimization; Probability density function; Vectors; Expectation maximization (EM) algorithm; hyperspectral unmixing; normal compositional model (NCM); particle swarm optimization (PSO);
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on
DOI :
10.1109/TGRS.2014.2319337