ISPRS Annals of the Photogrammetry, Remote Sensing and Spatial Information Sciences
Download
Publications Copernicus
Download
Citation
Articles | Volume II-3
ISPRS Ann. Photogramm. Remote Sens. Spatial Inf. Sci., II-3, 157–164, 2014
https://doi.org/10.5194/isprsannals-II-3-157-2014
ISPRS Ann. Photogramm. Remote Sens. Spatial Inf. Sci., II-3, 157–164, 2014
https://doi.org/10.5194/isprsannals-II-3-157-2014

  07 Aug 2014

07 Aug 2014

A Group-Lasso Active Set Strategy for Multiclass Hyperspectral Image Classification

D. Tuia1, N. Courty2, and R. Flamary3 D. Tuia et al.
  • 1EPFL, Laboratory of Geographic Information Systems, Lausanne, Switzerland
  • 2Université de Bretagne du Sud, IRISA, Vannes, France
  • 3Université de Nice Sophia-Antipolis, Lab. Lagrange, UMR CNRS 7293, Nice, France

Keywords: Algorithms, Learning, Feature extraction, Classification, High resolution, Hyper spectral

Abstract. Hyperspectral images have a strong potential for landcover/landuse classification, since the spectra of the pixels can highlight subtle differences between materials and provide information beyond the visible spectrum. Yet, a limitation of most current approaches is the hypothesis of spatial independence between samples: images are spatially correlated and the classification map should exhibit spatial regularity. One way of integrating spatial smoothness is to augment the input spectral space with filtered versions of the bands. However, open questions remain, such as the selection of the bands to be filtered, or the filterbank to be used. In this paper, we consider the entirety of the possible spatial filters by using an incremental feature learning strategy that assesses whether a candidate feature would improve the model if added to the current input space. Our approach is based on a multiclass logistic classifier with group-lasso regularization. The optimization of this classifier yields an optimality condition, that can easily be used to assess the interest of a candidate feature without retraining the model, thus allowing drastic savings in computational time. We apply the proposed method to three challenging hyperspectral classification scenarios, including agricultural and urban data, and study both the ability of the incremental setting to learn features that always improve the model and the nature of the features selected.