20 February 2018 Hyperspectral image anomaly detecting based on kernel independent component analysis
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Abstract
Hyperspectral image is a three-dimensional data cube which describes spatial information and spectral information of the scene. The anomaly detection technique can detect the targets which have difference between the image and the background without priori information. Kernel independent component analysis(KICA) is a method of mapping hyperspectral data into the kernel space for feature extraction. In this paper, the hyperspectral image is subjected to abnormal information detection based on KICA. First, we calculate the kernel matrix K in order to map the data to high-dimensional space for whitening and dimension reduction processing. Then we utilize the FastICA algorithm to extract the core independent component (KIC). Finally, the extracted independent components with the most abnormal information are analyzed by RX operator, kernel RX operator and abundance quantization method. Comparing with the simulation result and the detected result by RX method, the representation shows the algorithm based on KICA has better detection performance.
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Shangzhen Song, Shangzhen Song, Huixin Zhou, Huixin Zhou, Hanlin Qin, Hanlin Qin, Kun Qian, Kun Qian, Kuanhong Cheng, Kuanhong Cheng, Jin Qian, Jin Qian, } "Hyperspectral image anomaly detecting based on kernel independent component analysis", Proc. SPIE 10697, Fourth Seminar on Novel Optoelectronic Detection Technology and Application, 1069710 (20 February 2018); doi: 10.1117/12.2309936; https://doi.org/10.1117/12.2309936
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