Title :
Riemannian manifold learning based k-nearest-neighbor for hyperspectral image classification
Author :
Yushi Chen ; Zhouhan Lin ; Xing Zhao
Author_Institution :
Dept. of Inf. Eng., Harbin Inst. of Technol., Harbin, China
Abstract :
The existence of nonlinear characteristics in hyperspectral data is considered as an influential factor curtailing the classification accuracy of canonical linear classifier like k-nearest neighbor (k-NN). To deal with the problem, we investigated approaches to combine manifold learning methods and the k-NN classifier to preserve nonlinear characteristics contained in hyperspectral imagery. Then we proposed a Riemannian manifold learning (RML) based k-NN classifier for hyperspectral image classification, which substitutes the Euclidean distances used in canonical kNN by geodesic distances yielded by RML. The experimental results on AVIRIS data show that in most cases, the RML-kNN Classifier accesses higher classification accuracies than canonical k-NN.
Keywords :
differential geometry; hyperspectral imaging; image classification; AVIRIS data; Euclidean distances; RML-kNN classifier; Riemannian manifold learning; canonical kNN; canonical linear classifier; classification accuracy; geodesic distances; hyperspectral data; hyperspectral image classification; hyperspectral imagery; k-NN classifier; k-nearest-neighbor; nonlinear characteristics preservation; Accuracy; Classification algorithms; Feature extraction; Hyperspectral imaging; Manifolds; Principal component analysis; Riemannian manifold learning; classification; feature extraction; hyperspectral image; k nearest neighbors;
Conference_Titel :
Geoscience and Remote Sensing Symposium (IGARSS), 2013 IEEE International
Conference_Location :
Melbourne, VIC
Print_ISBN :
978-1-4799-1114-1
DOI :
10.1109/IGARSS.2013.6723195