Hyperspectral Band Selection Method Based on Normalized Multidimensional Mutual Information and Clonal Selection
A technology of clone selection and band selection, applied in the field of dimensionality reduction of hyperspectral images, can solve problems such as the need for manual determination and difficult to solve the number of iterations, and achieve the effect of improving efficiency and accuracy
Active Publication Date: 2021-12-14
HARBIN INST OF TECH
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Problems solved by technology
It can solve the difficult problem of directly solving the multidimensional mutual information and the problem that the number of iterations needs to be determined manually
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[0048] The specific implementation of the present invention will be described below with reference to the examples and drawings: the hyperspectral band selection algorithm based on normalized multidimensional mutual information and clone selection is applied to the hyperspectral image band selection.
[0049] First, a description of the hyperspectral image data is given:
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Abstract
The invention relates to a dimensionality reduction method for a hyperspectral image, in particular to a hyperspectral band selection algorithm based on normalized multidimensional mutual information and clone selection. A method for selecting the number of cloning iterations in hyperspectral image band selection is provided. The steps of the present invention are as follows: 1. Read in the hyperspectral image, define the antigen and randomly generate an initial set, and select the best individual composition set according to the individual fitness value. 2. Clone the best individual to generate a temporary clone set, perform high-frequency mutation operation on the clone set, and select the best individual to form a set again. 3. Use the normalized multidimensional mutual information to judge the correlation degree of the two sets before and after to decide whether to stop the iteration. The invention can achieve the purpose of reducing the dimension of hyperspectral images. In order to make the numerical calculation more accurate, the number of iterations is selected by using the normalized multi-dimensional mutual information, which reduces the unnecessary excessive iteration process in the selection process, and is suitable for hyperspectral images. Image band selection application.
Description
(1) Technical field [0001] The invention relates to a dimensionality reduction method for a hyperspectral image, in particular to a hyperspectral band selection method based on normalized multidimensional mutual information and clone selection. (2) Background technology [0002] Hyperspectral imagery is a mass data source that combines imagery and spectrum. It contains both image information and spectral information. It can not only give spectral intensity data of each pixel on each spectral segment, but also has a high spectral resolution. This imaging technology can be applied in the field of target recognition, providing a good detection method for the detection and search of airborne hyperspectral imagers. However, hyperspectral images contain too much information and there is redundant information, so it is necessary to perform feature selection on hyperspectral data. [0003] The main task of feature selection is to select the features that can represent the original ...
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Patent Type & Authority Patents(China)
IPC IPC(8): G06K9/62
CPCG06F18/2111G06F18/217G06F18/24
Inventor 张淼于文博沈毅
Owner HARBIN INST OF TECH
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