Abstract
The classification of hyperspectral images is the basis and hotspot in the research of hyperspectral images. In this paper, a classification algorithm of hyperspectral image based on multiple edge-preserving features and multiple feature learning (MFL) is proposed. First, aiming to eliminate the high correlation between adjacent bands and to remove the noise in the image, a new band clustering algorithm is employed to reduce the dimensions, where the dimension-reduced image can be used as spectral information features to extract linearly separable classes. Then, spatial information features are obtained by applying the multiple edge-preserving filter on the reduced-dimensional image. This filter is used to acquire more comprehensive spatial information features of the image for extraction of nonlinearly separable classes. Following that, the locality preserving projections method is applied to retain the representative spatial information from the extracted spatial information for classification accuracy. Finally, the spectral information features and spatial information features are combined for classification using the MFL. The experiments are conducted to verify the validity of the proposed algorithm on three universally adopted hyperspectral datasets.
Highlights
Hyperspectral images provide high spectral resolution and robust classification ability by recording hundreds of spectral bands for each pixel
MULTIPLE EDGE-PRESERVING FEATURES During the process of acquisition and transmission of hyperspectral remote sensing images, different kinds of noises are often introduced, which results in the fluctuation of spectral characteristics of the same objects
To extract features that are favorable for image classification, this study proposed a method based on the LPP for the multiple edge-preserving features (MEPFs)
Summary
Hyperspectral images provide high spectral resolution and robust classification ability by recording hundreds of spectral bands for each pixel. Aiming to enhance the accuracy of the image classification, experts in the field mostly focus on extracting the spatial information, such as the morphological attribute profiles (MAPs) [19], [20]. The multiple feature learning (MFL) method [32] utilizes the original spectral information and spatial information of the image and the kernel transformation of the spectral information and spatial information considering both linear and nonlinear features, which improves the classification accuracy to a certain extent.
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