Abstract

Land environment is one of the most commonly and importantly used synthetical natural environments in a virtual test. To recognize the ground truth for the construction of virtual land environment, a deep transfer hyperspectral image (HSI) classification method based on information measure and optimal neighborhood noise reduction was proposed in this article. Firstly, the information measure method was used to select the most valuable spectrum. Specifically, three representative bands were selected using the combination of entropy, color matching function, and mutual information. Based on the selected bands, a patch containing spatial-spectral information was constructed and used as the input of the convolutional neural networks (CNN) network. Then, in order to address the problem that a large number of labeled samples were required in deep learning method, the HSI classification method based on deep transfer learning was proposed. In the proposed method, the transfer of parameters ensured the classification performance with small training samples and reduced the training cost. Moreover, the optimal neighborhood noise reduction was used as the post-processing method to effectively eliminate the salt-and-pepper noise and further improve the classification performance. Experiments on two datasets demonstrated that the proposed method in this article had higher classification accuracy than similar methods.

Highlights

  • In recent years, hyperspectral image (HSI) analysis has been widely used in various fields [1], such as the monitoring of land cover change [2,3] and the environmental science and mineral development [4]

  • Rachmadi et al proposed an adaptation of a convolutional neural network (CNN) scheme proposed for segmenting brain lesions with considerable mass-effect, to segment white matter hyperintensities (WMH) characteristic of brains with none or mild vascular pathology in routine clinical brain magnetic resonance images (MRI) [6]

  • The results indicated that the transfer learning classification method and the optimal neighborhood noise reduction method could significantly improve the classification performance the hyperspectral image

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Summary

Introduction

Hyperspectral image (HSI) analysis has been widely used in various fields [1], such as the monitoring of land cover change [2,3] and the environmental science and mineral development [4]. The image classification methods based on the convolutional neural networks (CNN) have shown the ability to detect local features of the hyperspectral input data and obtain the classification results with high accuracy and stability. Slavkovikj et al proposed a CNN framework for hyperspectral image classification in which spectral features were extracted from a small neighborhood [11]. The hyperspectral image contains all of the spectral information of the ground objects, with the typical high-dimensional features. Manel proposed a frequency band selection method based on the hierarchical clustering of spectral layer, and used mutual information measure to reduce the dimensions of the image. The classification method based on deep transfer learning and neighborhood noise reduction was used to achieve high classification accuracy for small-sized samples and reduce the training complexity of the object dataset

The Related Work
H S I that satisfies tem poraland spatial requirem ents
Dimensionality Reduction of Hyperspectral Image Based on Information Measure
Exclusion
Band Selection Based on Mutual Information
Two Strategies for CNN Inputs
Hyperspectral Image Classification Method Based on Deep Transfer Learning
Principle
Method
Dataset
Experiments of Dimensionality Reduction Methods
(1) Experiments on Indian pines dataset
(2) Experiments on Pavia University dataset
Experiments of Deep Transfer Learning Methods
Findings
Conclusions
Full Text
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