Abstract

Deep learning techniques have boosted the performance of hyperspectral image (HSI) classification. In particular, convolutional neural networks (CNNs) have shown superior performance to that of the conventional machine learning algorithms. Recently, a novel type of neural networks called capsule networks (CapsNets) was presented to improve the most advanced CNNs. In this paper, we present a modified two-layer CapsNet with limited training samples for HSI classification, which is inspired by the comparability and simplicity of the shallower deep learning models. The presented CapsNet is trained using two real HSI datasets, i.e., the PaviaU (PU) and SalinasA datasets, representing complex and simple datasets, respectively, and which are used to investigate the robustness or representation of every model or classifier. In addition, a comparable paradigm of network architecture design has been proposed for the comparison of CNN and CapsNet. Experiments demonstrate that CapsNet shows better accuracy and convergence behavior for the complex data than the state-of-the-art CNN. For CapsNet using the PU dataset, the Kappa coefficient, overall accuracy, and average accuracy are 0.9456, 95.90%, and 96.27%, respectively, compared to the corresponding values yielded by CNN of 0.9345, 95.11%, and 95.63%. Moreover, we observed that CapsNet has much higher confidence for the predicted probabilities. Subsequently, this finding was analyzed and discussed with probability maps and uncertainty analysis. In terms of the existing literature, CapsNet provides promising results and explicit merits in comparison with CNN and two baseline classifiers, i.e., random forests (RFs) and support vector machines (SVMs).

Highlights

  • Hyperspectral imaging plays an important role in the accurate measurement, analysis, and interpretation of land scene spectra [1,2,3]

  • CapsNet with limited training samples has been presented for Hyperspectral image (HSI) classification; (2) a comparable paradigm of network architecture design has been proposed for the comparison of convolutional neural networks (CNNs) and CapsNet; and (3) CapsNet has much higher confidence for the predicted probabilities, which has been confirmed by probability maps and uncertainty analysis

  • In order to better clarify the intrinsic logic of this study, we provided a conceptual overview of HSI classification with CapsNet

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Summary

Introduction

Hyperspectral imaging plays an important role in the accurate measurement, analysis, and interpretation of land scene spectra [1,2,3]. Image classification is the most important technique for labeling categories of each pixel based on spatial-spectral information [9,10,11]. Sensors 2018, 18, 3153 and support vector machines (SVMs) [14,15], have been employed in HSI classification task [16,17]. Most of these methods suffer from various challenges, such as the curse of dimensionality and the spatial variability of spectral signature, or they focus only on spectral variability

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