Hyperspectral Image Classification Method and System Based on Stack Width Learning

A hyperspectral image and classification method technology, applied in the field of remote sensing impact processing and analysis, can solve the problems of difficulty in learning effective classification features, high sample complexity, and achieve the effect of small sample complexity

Active Publication Date: 2022-05-13
HUAZHONG NORMAL UNIV
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Problems solved by technology

[0009] The purpose of the present invention is to address the deficiencies of the above-mentioned prior art, and propose a hyperspectral image classification method based on stack width learning to solve the difficulty in learning effective classification features and high sample complexity in the hyperspectral image classification problem in the prior art. problem, improving the performance of spectral image classification

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  • Hyperspectral Image Classification Method and System Based on Stack Width Learning
  • Hyperspectral Image Classification Method and System Based on Stack Width Learning
  • Hyperspectral Image Classification Method and System Based on Stack Width Learning

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[0065] The technical solutions and effects of the present invention will be described in further detail below with reference to the accompanying drawings.

[0066] refer to figure 1 , the implementation steps of the present invention are as follows:

[0067] 1) Input a hyperspectral image, and normalize the image so that its range is within [0, 1].

[0068] Order I tr ={I 1 , I 2 ,...,I N} is a training set consisting of N pixels, where I i ∈R d (i=1,2,...,N) is the i-th training sample, and they belong to class C; the image is normalized, and the data values ​​are normalized to [0, 1] by the following steps:

[0069]

[0070] Among them, M x =max(I(:)),M n =min(I(:)) are the maximum and minimum values ​​of pixel values ​​on the input image, respectively, and is the pixel I with coordinates (i,j) ij B bands, is the pixel with coordinates (i, j) on the normalized hyperspectral image B bands.

[0071] 2) Use DB5 wavelet to decompose each pixel after norma...

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Abstract

The present invention proposes a hyperspectral image classification method and system based on stack width learning. First, the input image is preprocessed, including normalization, wavelet decomposition and difference; secondly, a small number of samples are selected as training samples, and the stack width is used to The learning model learns the spatial spectral features of the hyperspectral image; then, the training samples are used to train the width learning classifier, and finally, the features of the test samples are input into the trained width learning classifier to obtain the class labels. Using the stack width learning model of the present invention can obtain more abstract spatial spectral features, so the method of the present invention can obtain very accurate classification results. Due to the characteristics of width learning, the present invention has less sample complexity, and only needs a small amount of training samples to obtain better classification results, so it is more conducive to practical application.

Description

technical field [0001] The invention belongs to the technical field of remote sensing impact processing and analysis, and designs a hyperspectral image classification method and system, which can be used for resource management, scene interpretation, precision agriculture, urban planning, disaster prevention and mitigation, and the like. Background technique [0002] As a cutting-edge technology in the field of remote sensing, hyperspectral remote sensing has a wide range of applications in military and civilian fields. The rich spectral information of hyperspectral images not only provides more information for object classification, but also brings a series of new problems of feature extraction and pattern recognition. Researchers have conducted in-depth research on a series of problems in hyperspectral image classification, such as high data dimensionality and few training samples. However, the above-mentioned problems have not been effectively solved so far. [0003] Fi...

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G06V10/774G06V10/764G06K9/62
CPCG06F18/2413G06F18/214
Inventor 魏艳涛肖光润
Owner HUAZHONG NORMAL UNIV
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