Abstract

Spare representation of signals has received significant attention in recent years. Based on these developments, a sparse representation-based classification (SRC) has been proposed for a variety of classification and related tasks, including face recognition. Recently, a class dependent variant of SRC was proposed to overcome the limitations of SRC for remote sensing image classification. Traditionally, greedy pursuit based method such as orthogonal matching pursuit (OMP) is used for sparse coefficient recovery due to their simplicity as well as low time-complexity. However, orthogonal least square (OLS) has not yet been widely used in classifiers that exploit the sparse representation properties of data. Since OLS produces lower signal reconstruction error than OMP under similar conditions, we hypothesize that more accurate signal estimation will further improve the classification performance of classifiers that exploiting the sparsity of data. In this paper, we present a classification method based on OLS, which implements OLS in a classwise manner to perform the classification. We also develop and present its kernelized variant to handle nonlinearly separable data. Based on two real-world benchmarking hyperspectral datasets, we demonstrate that class dependent OLS based methods outperform several baseline methods including traditional SRC and the support vector machine classifier.

Highlights

  • In recent years, sparse representation of signals has drawn considerable interest and has shown to be powerful in many applications — in compression and denoising

  • Since orthogonal least square (OLS) produces lower signal reconstruction error compared to orthogonal matching pursuit (OMP) under similar condition [23] — an observation that will be further analyzed and explained we hypothesize that more accurate signal estimation will further improve the classification performance of sparse representation-based classification (SRC)

  • We present a class-dependent OLS-based classification method named cdOLS for the problem of hyperspectral image classification

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Summary

Introduction

Sparse representation of signals has drawn considerable interest and has shown to be powerful in many applications — in compression and denoising. The other major category is based on iterative greedy pursuit algorithms such as matching pursuit, orthogonal matching pursuit (OMP) and orthogonal least square (OLS) These greedy approaches have been widely used due to their computational simplicity and easy implementation. They find an atom at a time based on different criterion and update the sparse solution iteratively. Since OLS produces lower signal reconstruction error compared to OMP under similar condition [23] (such as the same sparsity level, same dictionary etc.) — an observation that will be further analyzed and explained, we hypothesize that more accurate signal estimation will further improve the classification performance of SRC.

Sparse representation
Experimental Validation
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