학술논문

Outlier-robust dimension reduction and its impact on hyperspectral endmember extraction
Document Type
Conference
Source
2012 4th Workshop on Hyperspectral Image and Signal Processing: Evolution in Remote Sensing (WHISPERS) Hyperspectral Image and Signal Processing: Evolution in Remote Sensing (WHISPERS), 2012 4th Workshop on. :1-4 Jun, 2012
Subject
Geoscience
Hyperspectral imaging
Abstracts
Covariance matrices
Hyperspectral images
Robust dimension reduction
Endmember extraction
Language
ISSN
2158-6268
2158-6276
Abstract
Hyperspectral endmember extraction is a process to extract end-member signatures from the observed hyperspectral data of an area. The presence of outliers in the data has been proved to pose a serious problem in endmember extraction. In this paper, unlike conventional outlier detectors which may be sensitive to window settings, we propose a robust affine set fitting (RASF) algorithm for joint dimension reduction and outlier detection without any window setting. Given the number of endmembers in advance, the RASF algorithm is to find a data-representative affine set from the corrupted data, while making the effects of outliers minimum, in the least-squares error sense. The proposed RASF algorithm is then combined with Neyman-Pearson hypothesis testing, termed RASF-NP, to further estimate the number of outliers present in the data. Computer simulations demonstrate the efficacy of the proposed method, and its impact on existing endmember extraction algorithms.