Title :
Global unsupervised Anomaly Extraction and Discrimination in hyperspectral images via Maximum Orthogonal-Complement analysis
Author :
Kuybeda, Oleg ; Malah, David ; Barzohar, Meir
Author_Institution :
Dept. of Electr. Eng., Technion - Israel Inst. of Technol., Haifa, Israel
Abstract :
In this paper we address the problem of global unsupervised detection, discrimination, and population estimation of anomalies in hyperspectral images. The proposed approach, denoted as Anomaly Extraction and Discrimination Algorithm (AXDA), detects anomalies via analysis of a signal-subspace obtained by the recently developed Maximum Orthogonal-Complement Algorithm (MOCA). MOCA is unique in providing an unsupervised combined estimation of signal-subspace that includes anomalies, and its rank. The main idea of AXDA is to iteratively reduce the anomaly vector subspace-rank, making the related anomalies to be poorly represented. This helps to detect them by a statistical analysis of the ℓ2,∞-norm of data residuals. As a by-product, AXDA provides also an anomaly-free robust background subspace and rank estimation.
Keywords :
hyperspectral imaging; image processing; iterative methods; statistical analysis; unsupervised learning; AXDA; MOCA; anomaly extraction and discrimination algorithm; anomaly vector subspace-rank; global unsupervised anomaly extraction; global unsupervised detection; hyperspectral images; maximum orthogonal-complement analysis; population estimation; statistical analysis; unsupervised combined estimation; Estimation; Europe; Hyperspectral imaging; Noise; Signal processing algorithms; Vectors;
Conference_Titel :
Signal Processing Conference, 2008 16th European
Conference_Location :
Lausanne