Abstract

Due to the rich physical meaning of aurora morphology, the classification of aurora images is an important task for polar scientific expeditions. However, the traditional classification methods do not make full use of the different features of aurora images, and the dimension of the description features is usually so high that it reduces the efficiency. In this paper, through combining multiple features extracted from aurora images, an aurora image classification method based on multi-feature latent Dirichlet allocation (AI-MFLDA) is proposed. Different types of features, whether local or global, discrete or continuous, can be integrated after being transformed to one-dimensional (1-D) histograms, and the dimension of the description features can be reduced due to using only a few topics to represent the aurora images. In the experiments, according to the classification system provided by the Polar Research Institute of China, a four-class aurora image dataset was tested and three types of features (MeanStd, scale-invariant feature transform (SIFT), and shape-based invariant texture index (SITI)) were utilized. The experimental results showed that, compared to the traditional methods, the proposed AI-MFLDA is able to achieve a better performance with 98.2% average classification accuracy while maintaining a low feature dimension.

Highlights

  • An aurora, which is known as polar light, is a process of large-scale discharge around the Earth [1]

  • Wang et al [10] proposed an algorithm for day-side aurora image classification based on the characteristics of X-grey level aura matrices (X-GLAM), which has a strong robustness to the impact of light and rotation

  • An aurora image classification method based on multi-feature latent Dirichlet allocation (AI-MFLDA) is proposed

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Summary

Introduction

An aurora, which is known as polar light, is a process of large-scale discharge around the Earth [1]. Han et al [13] proposed a method based on the scale-invariant feature transform (SIFT) feature and significant coding. An aurora image classification method based on multi-feature latent Dirichlet allocation (AI-MFLDA) is proposed. Considering the unique characteristics of aurora images, the AI-MFLDA method uses the mean and standard deviation (MeanStd) as the grayscale feature, SIFT [18] as the structural feature, and the shape-based invariant texture index (SITI) [19] as the textural feature. Compared with the traditional methods, the dimension of the features is reduced, improving the storage and transportation efficiency of the features, and reducing the time complexity of the aurora image classification. The proposed method was tested and compared to the traditional algorithms on a four-class aurora image dataset constructed by ourselves.

Latent Dirichlet Allocation
Multiple Feature Repreesseennttaattiioonn
Proposed AI-MFLDA
Experimental Dataset and Setup for Aurora Image Classification
Method
Methods
Findings
Conclusions
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