Abstract

To solve the problem that the traditional hyperspectral image classification method cannot effectively distinguish the boundary of objects with a single scale feature, which leads to low classification accuracy, this paper introduces the idea of guided filtering into hyperspectral image classification, and then proposes a multi-scale guided feature extraction and classification (MGFEC) algorithm for hyperspectral images. Firstly, the principal component analysis theory is used to reduce the dimension of hyperspectral image data. Then, guided filtering algorithm is used to achieve multi-scale spatial structure extraction of hyperspectral image by setting different sizes of filtering windows, so as to retain more edge details. Finally, the extracted multi-scale features are input into the support vector machine classifier for classification. Several practical hyperspectral image datasets were used to verify the experiment, and compared with other spectral feature extraction algorithms. The experimental results show that the multi-scale features extracted by the MGFEC algorithm proposed in this paper are more accurate than those extracted by only using spectral information, which leads to the improvement of the final classification accuracy. This fully shows that the proposed method is not only effective, but also suitable for processing different hyperspectral image data.

Highlights

  • To solve the problem that the traditional hyperspectral image classification method cannot effectively distinguish the boundary of objects with a single scale feature, which leads to low classification accuracy, this paper introduces the idea of guided filtering into hyperspectral image classification, and proposes a multi-scale guided feature extraction and classification (MGFEC) algorithm for hyperspectral images

  • This paper introduced the idea of guided filtering into hyperspectral image feature extraction, and proposed a multi-scale guided feature extraction and classification (MGFEC) algorithm for hyperspectral images

  • Aiming at the problem that single scale feature cannot effectively express the differences between different objects and distinguish the boundaries of objects in hyperspectral remote sensing image classification, this paper utilizes the principal component analysis (PCA) theory to achieve the dimension reduction, abstract multi-scale features with guided filtering principle, and get the deep features through the convolution operation of random blocks

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Summary

Guided filtering

Guided filter (GF) is a very efficient edge-preserving filter with better performance than bilateral filter. According to the idea of image guided filtering, there is a linear relationship between the guided image G and the output image F in the local filtering window Wk , and the relationship model can be expressed by Eq (1). It can be seen in Eq (1) that as long as the values of the linear coefficients ak and bk are calculated, and the pixel value Fi(m, n) of the filtered image can be obtained through the pixel value Gi(m, n) of the guide image. The coefficients ak and bk in Eqs. (1) and (2) can be solved by the least square method, and its calculation equation is shown in Eq (3)

Dimension reduction by principal component analysis
Perform classification processing
Description of MGFEC algorithm
Scene Indian Pines Pavia University Salinas Valley
Color Samples
Parameter OA Kappa OA Kappa OA Kappa OA Kappa
Findings
Conclusions
Additional information
Full Text
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