Title :
Improving Spatial–Spectral Endmember Extraction in the Presence of Anomalous Ground Objects
Author :
Mei, Shaohui ; He, Mingyi ; Zhang, Yifan ; Wang, Zhiyong ; Feng, Dagan
Author_Institution :
Sch. of Electron. & Inf., Northwestern Polytech. Univ., Xi´´an, China
Abstract :
Endmember extraction (EE) has been widely utilized to extract spectrally unique and singular spectral signatures for spectral mixture analysis of hyperspectral images. Recently, spatial-spectral EE (SSEE) algorithms have been proposed to achieve superior performance over spectral EE (SEE) algorithms by taking both spectral similarity and spatial context into account. However, these algorithms tend to neglect anomalous endmembers that are also of interest. Therefore, in this paper, an improved SSEE (iSSEE) algorithm is proposed to address such limitation of conventional SSEE algorithms by accounting for both anomalous and normal endmembers. By developing simplex projection and simplex complementary projection, all the hyperspectral pixels are projected into a simplex determined by the normal endmembers extracted in conventional SSEE algorithms. As a result, anomalous endmembers are identified iteratively by utilizing the l2∞ norm to find the maximum simplex complementary projection. In order to determine how many anomalous endmembers are to be extracted, a novel Residual-be-Noise Probability-based algorithm is also proposed by elegantly utilizing the spatial-purity map generated in the previous SSEE step. Experimental results on both synthetic and real datasets demonstrate that simplex projection errors can be significantly reduced by identifying both anomalous and normal endmembers in the proposed iSSEE algorithm. It is also confirmed that the performance of the proposed iSSEE algorithm clearly outperforms that of SEE algorithms since both spatial context and spectral similarity are utilized.
Keywords :
geophysical image processing; geophysical techniques; probability; remote sensing; spectral analysis; Residual-be-Noise probability-based algorithm; anomalous endmembers; anomalous ground objects; endmember identification; hyperspectral images; hyperspectral pixels; hyperspectral remote sensing; iSSEE algorithm; improved SSEE algorithm; normal endmembers; simplex complementary projection; simplex projection errors; singular spectral signatures; spatial context; spatial-purity map; spatial-spectral EE algorithms; spatial-spectral endmember extraction; spectral mixture analysis; spectral similarity; Algorithm design and analysis; Context; Hyperspectral imaging; Kernel; Noise; Strontium; Anomalous ground objects; endmember extraction (EE); endmember identification; hyperspectral remote sensing; spatial–spectral; spectral mixture analysis (SMA);
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on
DOI :
10.1109/TGRS.2011.2163160