Abundance-Indicated Subspace for Hyperspectral Classification With Limited Training Samples


Abundance-Indicated Subspace for Hyperspectral Classification With Limited Training Samples

Xu, S.; Li, J.; Khodadadzadeh, M.; Marinoni, A.; Gamba, P.; Li, B.

Abstract

The imbalance between the (often limited) number of available training samples and the high data dimensionality, together with the presence of mixed pixels, often complicates the classification of remotely sensed hyperspectral data. In this paper, we tackle these problems by developing a new method that combines spectral unmixing and classification techniques in a subspace-based approach. The proposed method is developed under the assumption that the spectral signature of a land cover class is associated with a given set of pure spectral signatures (called endmembers in spectral unmixing terminology), which define a low-dimensional subspace with clear physical meaning. We aim to exploit this relationship to learn the class-dependent subspaces and integrate them with a multinomial logistic regression procedure. Experiments on synthetic datasets and real hyperspectral images show that our method is able to obtain competitive performances in comparison with other approaches, particularly when very limited training sets are available.

Keywords: Hyperspectral image classification; mixed pixels; mutinomial logistic regression (MLR); spectral unmixing; subspace learning

Permalink: https://www.hzdr.de/publications/Publ-30314