Title :
Complementarity of Discriminative Classifiers and Spectral Unmixing Techniques for the Interpretation of Hyperspectral Images
Author :
Jun Li ; Dopido, Inmaculada ; Gamba, Paolo ; Plaza, Antonio
Author_Institution :
Guangdong Key Lab. for Urbanization & GeoSimulation, Sun Yat-sen Univ., Guangzhou, China
Abstract :
Classification and spectral unmixing are two important techniques for hyperspectral data exploitation. Traditionally, these techniques have been exploited independently. In this paper, we propose a new technique that exploits their complementarity. Specifically, we develop a new framework for semisupervised hyperspectral image classification that naturally integrates the information provided by discriminative classification and spectral unmixing. The idea is to assign more confidence to the information provided by discriminative classification for those pixels that can be easily catalogued due to their spectral purity. For those pixels that are more highly mixed in nature, we assign more confidence to the information provided by spectral unmixing. In this case, we use a traditional spectral unmixing chain to produce the abundance fractions of the pure signatures (endmembers) that model the mixture information at a subpixel level. The decision on which source of information is prioritized in the process is taken adaptively, when new unlabeled samples are selected and included in our semisupervised framework. In this regard, the proposed approach can adaptively integrate these two sources of information without the need to establish any weight parameters, thus exploiting the complementarity of classification and unmixing and selecting the most appropriate source of information in each case. In order to test our concept, which has similar computational complexity as traditional semisupervised classification strategies, we have used two different hyperspectral data sets with different characteristics and spatial resolution. In our experiments, we consider two different discriminative classifiers: multinomial logistic regression and probabilistic support vector machine. The obtained results indicate that the proposed approach, which jointly exploits the features provided by classification and spectral unmixing in adaptive fashion, offers an effective solution to improve- classification performance in hyperspectral scenes containing mixed pixels.
Keywords :
computational complexity; geophysical image processing; hyperspectral imaging; image classification; image resolution; natural scenes; regression analysis; spectral analysis; support vector machines; adaptive integration; computational complexity; discriminative classifier; hyperspectral data exploitation; hyperspectral data sets; hyperspectral image interpretation; hyperspectral scenes; multinomial logistic regression; probabilistic support vector machine; semisupervised hyperspectral image classification; spatial resolution; spectral unmixing technique; unlabeled samples selection; weight parameters; Hyperspectral imaging; Probabilistic logic; Spatial resolution; Support vector machines; Training; Vectors; Discriminative classification; hyperspectral imaging; semisupervised learning; spectral unmixing;
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on
DOI :
10.1109/TGRS.2014.2366513