DocumentCode
54781
Title
Automatic Feature Learning for Spatio-Spectral Image Classification With Sparse SVM
Author
Tuia, Devis ; Volpi, Michele ; Dalla Mura, Mauro ; Rakotomamonjy, Alain ; Flamary, Remi
Author_Institution
Lab. des Syst. d´Inf. G ographique (LaSIG), Ecole Polytech. F d rale de Lausanne (EPFL), Lausanne, Switzerland
Volume
52
Issue
10
fYear
2014
fDate
Oct. 2014
Firstpage
6062
Lastpage
6074
Abstract
Including spatial information is a key step for successful remote sensing image classification. In particular, when dealing with high spatial resolution, if local variability is strongly reduced by spatial filtering, the classification performance results are boosted. In this paper, we consider the triple objective of designing a spatial/spectral classifier, which is compact (uses as few features as possible), discriminative (enhances class separation), and robust (works well in small sample situations). We achieve this triple objective by discovering the relevant features in the (possibly infinite) space of spatial filters by optimizing a margin-maximization criterion. Instead of imposing a filter bank with predefined filter types and parameters, we let the model figure out which set of filters is optimal for class separation. To do so, we randomly generate spatial filter banks and use an active-set criterion to rank the candidate features according to their benefits to margin maximization (and, thus, to generalization) if added to the model. Experiments on multispectral very high spatial resolution (VHR) and hyperspectral VHR data show that the proposed algorithm, which is sparse and linear, finds discriminative features and achieves at least the same performances as models using a large filter bank defined in advance by prior knowledge.
Keywords
channel bank filters; geophysical image processing; hyperspectral imaging; image classification; image resolution; learning (artificial intelligence); optimisation; spatial filters; support vector machines; active-set criterion; automatic feature learning; class separation enhancement; hyperspectral VHR data; margin-maximization criterion; multispectral very high spatial resolution; remote sensing image classification; sparse SVM; spatial filter bank; spatial filtering; spatial image resolution; spatial information; spatio-spectral image classification; Feature extraction; Optimization; Principal component analysis; Spatial resolution; Support vector machines; Training; Attribute profiles; feature selection; hyperspectral; mathematical morphology; texture; very high resolution;
fLanguage
English
Journal_Title
Geoscience and Remote Sensing, IEEE Transactions on
Publisher
ieee
ISSN
0196-2892
Type
jour
DOI
10.1109/TGRS.2013.2294724
Filename
6708428
Link To Document