Abstract

Sparse representation (SR)-driven classifiers have been widely adopted for hyperspectral image (HSI) classification, and many algorithms have been presented recently. However, most of the existing methods exploit the single layer hard assignment based on class-wise reconstruction errors on the subspace assumption; moreover, the single-layer SR is biased and less stable due to the high coherence of the training samples. In this paper, motivated by category sparsity, a novel multi-layer spatial-spectral sparse representation (mlSR) framework for HSI classification is proposed. The mlSR assignment framework effectively classifies the test samples based on the adaptive dictionary assembling in a multi-layer manner and intrinsic class-dependent distribution. In the proposed framework, three algorithms, multi-layer SR classification (mlSRC), multi-layer collaborative representation classification (mlCRC) and multi-layer elastic net representation-based classification (mlENRC) for HSI, are developed. All three algorithms can achieve a better SR for the test samples, which benefits HSI classification. Experiments are conducted on three real HSI image datasets. Compared with several state-of-the-art approaches, the increases of overall accuracy (OA), kappa and average accuracy (AA) on the Indian Pines image range from 3.02% to 17.13%, 0.034 to 0.178 and 1.51% to 11.56%, respectively. The improvements in OA, kappa and AA for the University of Pavia are from 1.4% to 21.93%, 0.016 to 0.251 and 0.12% to 22.49%, respectively. Furthermore, the OA, kappa and AA for the Salinas image can be improved from 2.35% to 6.91%, 0.026 to 0.074 and 0.88% to 5.19%, respectively. This demonstrates that the proposed mlSR framework can achieve comparable or better performance than the state-of-the-art classification methods.

Highlights

  • The quantitative useful information provided by high-resolution sensors is helpful to distinguish between different land cover classes with different spectral responses

  • This result is very competitive on this dataset, which indicates the effectiveness of the proposed multi-layer spatial-spectral sparse representation (mlSR) framework

  • We compare the classification accuracies of our approaches of Pavia are summarized in Tables 5 and 6

Read more

Summary

Introduction

The quantitative useful information provided by high-resolution sensors is helpful to distinguish between different land cover classes with different spectral responses. There have been a variety of studies that utilize spatial-spectral information for HSI classification [7,8]. Some feature-matching methods [16,17] in the computer vision area can be generalized for HSI classification, but they have a prerequisite that the spectral features should be extracted in advance. These local features may be contradictory because of their overlapping with each other and result in less contribution to the classifiers

Methods
Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call