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Vegetation Coverage Estimation Method Based on Improved Linear Spectral Mixture Model

A spectral mixing model and vegetation coverage technology, which is applied in computing, computer components, character and pattern recognition, etc., can solve the problems of low estimation accuracy of vegetation coverage, complex vegetation coverage process, and large amount of calculations

Inactive Publication Date: 2016-11-02
BEIJING NORMAL UNIVERSITY
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Problems solved by technology

But in fact, in images with low spatial resolution and medium spatial resolution, most of the mixed pixels are only composed of a few of the endmembers of the entire image, and the method of decomposing the endmembers of the entire image makes it difficult to estimate the vegetation coverage. The degree process is very complex and the amount of calculation is large
[0007] In order to simplify the process of estimating vegetation coverage and the amount of computation, the existing technology proposes a Linear Spectral Mixture Model (LSMM, Linear Spectral Mixture Model), which calculates the response value between the actual spectrum of the pixel and the reference endmember spectrum to obtain Judge the degree of similarity between two spectra, and select the reference endmember spectrum with high similarity with the pixel spectrum, so as to dynamically determine the number of reference endmembers participating in spectral decomposition, so that it is not necessary to use all image endmembers for decomposition, thereby simplifying the process and However, this method judges the degree of similarity by calculating the response value between the actual spectrum of the pixel and the reference endmember spectrum, and determines the number of reference endmembers participating in the spectral decomposition according to the similarity, so that the estimation accuracy of vegetation coverage is not high.

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  • Vegetation Coverage Estimation Method Based on Improved Linear Spectral Mixture Model
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  • Vegetation Coverage Estimation Method Based on Improved Linear Spectral Mixture Model

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Embodiment Construction

[0082] The technical solutions of the various embodiments of the present invention will be clearly and completely described below in conjunction with the accompanying drawings. Apparently, the described embodiments are only some of the embodiments of the present invention, not all of them. Based on the embodiments of the present invention, all other embodiments obtained by persons of ordinary skill in the art without making creative efforts belong to the protection scope of the present invention.

[0083] In the existing estimation of vegetation coverage, in the spectral decomposition process, the linear spectral decomposition model uses all image endmembers to decompose any pixel in the image, which makes the process of estimating vegetation coverage complicated and computationally intensive. ; while the estimation of vegetation coverage based on the linear spectral mixture model, the similarity is judged by calculating the response value between the actual spectrum of the pix...

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Abstract

The invention discloses a vegetation coverage estimation method based on an improved linear spectrum mixed model. The method includes: obtaining image data in the research area; performing rough geometric correction and radiation correction preprocessing on the obtained image data; using the pure pixel index method to extract endmembers from the preprocessed images, and constructing variable endmembers Linear spectral decomposition model; according to the constructed variable endmember linear spectral decomposition model, the vegetation coverage information in the research area is extracted. By applying the present invention, the estimation accuracy of vegetation coverage can be improved.

Description

technical field [0001] The invention relates to vegetation coverage estimation technology, in particular to a vegetation coverage estimation method based on an improved linear spectrum mixed model. Background technique [0002] Vegetation is a comprehensive product of the long-term interaction of landform, hydrology, soil, climate change and human activities, and its distribution, composition and development are closely related to environmental conditions, especially climatic conditions. Vegetation coverage refers to the percentage of the vertical projection of vegetation (branches, stems, leaves) on the ground to the statistical area of ​​the surface. It is an important parameter to describe the horizontal coverage of surface vegetation and an important quantitative information to measure the coverage of surface vegetation. , plays an important role in assessing the degree of land degradation and desertification. At the same time, vegetation coverage is also an important c...

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G06K9/00
Inventor 王宏李颖李晓兵
Owner BEIJING NORMAL UNIVERSITY
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