Title :
Unsupervised Feature Selection Using Geometrical Measures in Prototype Space for Hyperspectral Imagery
Author :
Ghamary Asl, Mohsen ; Mobasheri, Mohammad Reza ; Mojaradi, Barat
Author_Institution :
Fac. of Geodesy & Geomatics Eng., K.N. Toosi Univ. of Technol., Tehran, Iran
Abstract :
Feature/band selection is a common technique to overcome the “curse of dimensionality” posed by the high dimensionality of hyperspectral imagery. When the image is characterized by unknown phenomena, an unsupervised approach can be utilized to select the most distinctive and informative bands. The efficiency of an unsupervised feature selection (FS) depends on the criteria to be optimized and the space (e.g., feature space, pixel space, spectral space, etc.) in which the data are represented. Moreover, the determination of the initial feature and the determination of the optimal feature size (the optimal number of distinct bands to be selected) are other challenges faced in unsupervised approaches. In this paper, we propose two unsupervised FS methods by representing bands in the prototype space (PS). The first method proposes a way for selecting the initial feature based on the orthogonal distance from the PS diagonal and determines the optimal feature size by employing the HySime algorithm in the PS. The second method uses two criteria defined by the tangent of the angles between the band vectors in the PS in order to select the initial feature and to describe the band correlations. Meanwhile, the determination of the optimal feature size is embedded in this method. The experimental results on real and synthetic data sets show that our methods are more reliable and can yield a better result in terms of class separability and Friedman test than other widely used techniques.
Keywords :
feature selection; geometry; geophysical techniques; hyperspectral imaging; remote sensing; Friedman test; HySime algorithm; PS band vectors; PS diagonal; angle tangent; band correlations; class separability; dimensionality curse; distinct band optimal number; distinctive band; feature space; feature-band selection; hyperspectral imagery high dimensionality; image characterization; informative band; initial feature determination; initial feature selection; optimal feature size determination; orthogonal distance; pixel space; prototype space geometrical measurement; real data set; representing PS band; representing prototype space band; spectral space; synthetic data set; unknown phenomena; unsupervised FS efficiency; unsupervised FS methods; unsupervised approach; unsupervised feature selection efficiency; widely used techniques; Absorption; Clustering algorithms; Correlation; Feature extraction; Hyperspectral imaging; Prototypes; Vectors; Hyperspectral imagery (HSI); optimal feature size; prototype space (PS); unsupervised feature selection (FS);
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on
DOI :
10.1109/TGRS.2013.2275831