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A hyperspectral image denoising method based on fisher dictionary learning and low-rank representation

A technology of hyperspectral image, low rank representation, applied in the field of hyperspectral image denoising, it can solve the problems of single spectral information or spatial information denoising, reducing data reliability, insufficient denoising effect, etc., achieving excellent denoising performance, The effect of high use value and improved classification accuracy

Active Publication Date: 2019-11-08
NANJING NORMAL UNIVERSITY
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  • Abstract
  • Description
  • Claims
  • Application Information

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Problems solved by technology

However, in the process of collecting and transmitting hyperspectral images, they are often polluted by various types of noise, which greatly reduces the reliability of the data. Currently, hyperspectral images based on spectral signals and two-dimensional image denoising technology The denoising algorithm has achieved good results
However, due to the rich spectral information and spatial information of hyperspectral images, it is far from enough to denoise only by using spectral information or spatial information.

Method used

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  • A hyperspectral image denoising method based on fisher dictionary learning and low-rank representation
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  • A hyperspectral image denoising method based on fisher dictionary learning and low-rank representation

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Embodiment

[0112] This embodiment includes the following parts:

[0113] Step 1. Transform the data space:

[0114] In order to facilitate the comprehensive processing of data, it is necessary to transform the three-dimensional hyperspectral image data into a two-dimensional matrix of space-spectral joint.

[0115] For any hyperspectral image X∈R m×n×b , where m and n are the number of rows and columns of its spatial structure, respectively, and b is the number of bands. Record the value of each pixel of the hyperspectral image on all bands as a vector d h ∈ R b (h=1,2,...,mn), then all pixels d h Put together to form a two-dimensional matrix D=[d 1 , d 2 ,...,d mn ]∈R b×mn .

[0116] Step 2. Learn the dictionary:

[0117] Obtain a new dictionary through the Fisher discriminant criterion, and satisfy the linear representation of the sub-dictionary corresponding to the class. The ability to represent samples of this class is strong and the ability to represent other classes is w...

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Abstract

The invention discloses a hyperspectral image denoising method based on Fisher dictionary learning and low-rank representation, which includes the following steps: transform the data space; learn the dictionary; replace the dictionary; improve LRR; input and output data; and inversely transform the noise-free image; The invention can effectively remove various noises in hyperspectral images and improve the data quality and application value of hyperspectral images. In addition, in the present invention, Fisher dictionary learning is used to obtain the discriminant dictionary replacement model. The dictionary in the replacement model is robust to the parameters in the model, and therefore has high use value.

Description

technical field [0001] The invention relates to the technical field of hyperspectral image processing, in particular to a hyperspectral image denoising method based on Fisher dictionary learning and low-rank representation. Background technique [0002] Modern remote sensing technology originated in the 1960s. It is a discipline and technology that observes or obtains certain characteristic information by using the electromagnetic waves reflected or radiated by the receiving object or target without contacting the object or target being studied. Remote sensing technology has the advantages of not being restricted by factors such as geography, man-made and weather, and can continuously provide dynamic and large-scale observations of a variety of surface information. And many other fields have a wide range of applications. However, in the process of collecting and transmitting hyperspectral images, they are often polluted by various types of noise, which greatly reduces the ...

Claims

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G06T5/00
CPCG06T2207/20172G06T5/70
Inventor 杨明俞珍秒吕静高阳
Owner NANJING NORMAL UNIVERSITY