Abstract

Numerous studies have been conducted for hyperspectral image (HSI) classification by assuming that the label information of training data is fully available and correct. However, such an assumption may not always be true in practical applications, which could impact feature extraction methods and eventually compromise the performance of hyperspectral image classification. To address this issue in hyperspectral image classification, we propose a Regularized Fuzzy Discriminant Analysis (RFDA) based feature extraction method to effectively utilize the spatial and spectral information of HSIs with noisy labels. Firstly, the physical properties of HSIs are explored to reconstruct the data. Secondly, the labeled training samples and their unlabeled spatial neighborhood samples are fuzzified using the Fuzzy K-Nearest Neighbor (FKNN) method. Finally, a regularization term using a Fuzzy Locality Preserving Scatter (FLPS) matrix is integrated into fuzzy discriminant analysis, and the spatial-spectral information of HSIs is effectively fused to construct the projection matrix. As a result, the proposed method not only corrects the mislabeled samples effectively, but also preserves the neighborhood relationship among the pixels in the spatial domain and the fundamental structure among the samples in the spectral-domain, which is beneficial for hyperspectral image classification. Experimental results on three synthetic datasets and three public hyperspectral datasets show that our proposed RFDA method outperforms several state-of-the-art feature extraction methods in terms of classification accuracy.

Highlights

  • As remotely sensed hyperspectral images (HSIs) containing both spatial and spectral information can help identify various ground objects with a wide range of wavelengths, remote sensing has been widely used in many applications such as precision agriculture [1], geological exploration [2], food safety [3], and environmental monitoring [4]

  • EXPERIMENTAL RESULTS AND DISCUSSIONS Comprehensive experiments were carried out using standard 2D synthetic datasets and real HSI datasets to evaluate the performance of our proposed method

  • In the experiments using the synthetic datasets, the proposed Regularized Fuzzy Discriminant Analysis (RFDA) algorithm is compared with four dimension reduction algorithms: Linear Discriminant Analysis (LDA), Principal Component Analysis (PCA), Locality Preserving Projections (LPP), and Local Fisher Discriminant Analysis (LFDA) [32], [33]

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Summary

INTRODUCTION

As remotely sensed hyperspectral images (HSIs) containing both spatial and spectral information can help identify various ground objects with a wide range of wavelengths, remote sensing has been widely used in many applications such as precision agriculture [1], geological exploration [2], food safety [3], and environmental monitoring [4]. Due to the high dimensional nature of hyperspectral images [5], [6], various feature extraction methods have been proposed for effective HIS classification which aims. In this paper, we address the noisy label issue in hyperspectral image classification by fuzzifying sample labels for spectral-spatial feature extraction, and propose a Regularized Fuzzy Discriminant Analysis (RFDA) algorithm for effective and efficient HSI classification. Novel fuzzy discriminant analysis method is proposed to reduce the dimensionality of the samples, which effectively mitigate the impact of the mislabeled training samples on feature extraction.

THE PROPOSED METHOD
SUMMARY AND COMPLEXITY ANALYSIS OF OUR PROPOSED METHOD
EXPERIMENT 1
EXPERIMENT 2
CONCLUSION
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