Title :
A full diagonal bandwidth gaussian kernel SVM based ensemble learning for hyperspectral chemical plume detection
Author :
Gurram, Prudhvi ; Kwon, Heesung
Author_Institution :
Army Res. Lab., ATTN: RDRL-SES-E, Adelphi, MD, USA
Abstract :
Recently, a sparse kernel-based SVM ensemble learning technique has been introduced by the authors for hyperspectral plume detection/classification. This technique first randomly selects spectral feature subspaces from the input data. Each individual SVM classifier then independently conducts its own learning within its corresponding spectral feature space using a Gaussian kernel with a single bandwidth parameter. Each classifier constitutes a weak classifier. The sub-classifiers are sparsely weighted and aggregated to make an ensemble decision. In this paper, in order to further improve the generalization performance of the ensemble classifier, Gaussian kernel with full diagonal bandwidth parameter matrix is used for each sub-classifier where the parameters are optimally learned by minimizing a bound of the generalization error estimate using a gradient descent algorithm. A performance comparison between the aggregating techniques - sparse kernel-based technique and majority voting with single bandwidth and full diagonal optimized bandwidth parameters as applied to hyperspectral chemical plume detection is presented in the paper.
Keywords :
atmospheric techniques; geophysical signal processing; gradient methods; learning (artificial intelligence); remote sensing; signal classification; support vector machines; Gaussian kernel based SVM ensemble learning; SVM classifier; ensemble decision; full diagonal bandwidth SVM ensemble learning; full diagonal bandwidth parameter matrix; gradient descent algorithm; hyperspectral chemical plume detection; majority voting; sparse kernel based SVM ensemble learning; spectral feature subspaces; weak classifier; Bandwidth; Chemicals; Hyperspectral imaging; Kernel; Optimization; Support vector machines; Chemical Plume Detection; Ensemble Learning; Kernel Parameter Optimization; SVM; Sparse Kernel Learning;
Conference_Titel :
Geoscience and Remote Sensing Symposium (IGARSS), 2010 IEEE International
Conference_Location :
Honolulu, HI
Print_ISBN :
978-1-4244-9565-8
Electronic_ISBN :
2153-6996
DOI :
10.1109/IGARSS.2010.5649859