Abstract

Recently, the inclusion of spatial information has drawn increasing attention in hyperspectral image (HSI) applications due to its effectiveness in terms of improving classification accuracy. However, most of the techniques that include such spatial knowledge in the analysis are based on spatial–spectral weak assumptions, i.e., all pixels in a spatial region are assumed to belong to the same class, and close pixels in spectral space are assigned the same label. This article proposes a novel structure-aware multikernel learning (SaMKL) method for HSI classification, which takes into account structural issues in order to effectively overcome the aforementioned weak assumptions and introduce a true multikernel learning process (based on multiple features derived from the original HSI), thus improving the spectral separability of such features. The proposed SaMKL method is composed of the following main steps. First, multiple (i.e., spectral, spatial, and textural) features are extracted from the original HSI based on various filtering operators. Then, a $k$ -peak density approach is designed to define superpixel regions that can properly capture the structural information of HSIs and overcome the aforementioned weak assumptions. Next, three sets of composite kernels are separately constructed to make full use of the spectral, spatial, and textural information. Meanwhile, these three sets of composite kernels are independently incorporated into a support vector machine classifier to obtain their corresponding classification results. Finally, majority voting is used as a simple and effective method to obtain the final classification labels. Experimental results on real HSI datasets indicate that the SaMKL outperforms other well-known and state-of-the-art classification approaches, in particular, when very limited labeled samples are available a priori .

Highlights

  • L AND use and land cover classification using different kinds of Earth observation (EO) data, e.g., hyperspectral images (HSIs) [1], synthetic aperture radar (SAR) [2], light detection and ranging (LiDAR) [3], and others [4], is a challenging task in geoscience and remote sensing

  • (2) University of Pavia: The University of Pavia image was collected by the Reflective Optics System Imaging Spectrometer (ROSIS-3) over an urban area centered at the University of Pavia, Italy

  • This paper introduces a new structure-aware multi-kernel learning method for HSI classification

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Summary

Introduction

L AND use and land cover classification using different kinds of Earth observation (EO) data, e.g., hyperspectral images (HSIs) [1], synthetic aperture radar (SAR) [2], light detection and ranging (LiDAR) [3], and others [4], is a challenging task in geoscience and remote sensing. Extensive works have been proposed to develop accurate pixelwise classifiers for the analysis of HSIs, such as random forests [15], [16], neural networks [17]–[19], multinomial logistic regression (MLR [20], [21], support vector machines (SVMs) [22], and sparse representation-based classifiers [23]– [25] Among these methods, the SVM classifier has shown significant performance in terms of classification accuracy due to the following main advantages: i) it requires relatively few labeled samples to achieve good classification accuracies; ii) it is robust to the spectral dimensionality of HSIs [22]. The SVM is widely recognized as a powerful classification tool, it is unable to overcome the problems caused by the lack of spectral separability of features

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