Extracting method of optical spectrum vector cross-correlation features in hyper-spectral image classification

A hyperspectral image and spectral vector technology, which is applied in the field of extraction of spectral vector cross-correlation features in hyperspectral image classification, can solve the problems of increasing the difficulty of fine classification, high dependence on spectral feature databases, and large data redundancy.

Active Publication Date: 2015-03-25
SHANDONG UNIV
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Problems solved by technology

The hyperspectral image itself has great defects, such as excessive data redundancy caused by massive amounts, spectral mixing caused by high spatial resolution, and the influence of noise, which greatly increases the difficulty of fine classification
The traditional hyperspectral feature matching classification method requires a lot of prior knowledge and is too dependent on the spectral feature database, while the statistical classification method is slow in operation and its accuracy is greatly affected by the training samples.
The existing feature extraction and classification methods are often limited by the defects of the hyperspectral image itself, which is manifested by the lack of stability and robustness of the algorithm

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  • Extracting method of optical spectrum vector cross-correlation features in hyper-spectral image classification
  • Extracting method of optical spectrum vector cross-correlation features in hyper-spectral image classification
  • Extracting method of optical spectrum vector cross-correlation features in hyper-spectral image classification

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Embodiment Construction

[0073] The present invention will be further described below in conjunction with the accompanying drawings and embodiments.

[0074] like figure 1 As shown, the process of the autocorrelation feature extraction method is:

[0075] 1) Data conversion. Transform the original 3D hyperspectral data I into 2D feature data I 1 , each row corresponds to a sample, and each column corresponds to a feature.

[0076] 2) Data normalization. Data normalization completes a data mapping process. Step 1) I 1 The data is projected onto the interval [-1,1]. The procedure is to search for the minimum value x of the eigenvalues ​​in each column min , the maximum value x max , will [x min ,x max ] is mapped to [-1,1].

[0077] 3) The principal component analysis method (PCA) is used to reduce the dimensionality and denoise of the data. On the basis of 2), data dimensionality reduction is required to represent as much original image information as possible with as few dimensions as poss...

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Abstract

The invention discloses an extracting method of optical spectrum vector cross-correlation features in hyper-spectral image classification. The method comprises the steps that pretreatment, normalization, denoising, dimensionality reduction and the like of hyper-spectral image data are included; boostrap sampling and weighted average are performed so as to obtain a reference sample set; spectral signal random process theoretical assumption includes first assumption and second assumption, wherein in the first assumption, spectral signals are random experiments of a stable random process at a certain time, and in the second assumption, the probabilities of all random experiment values are the equal, the spectral signals are abstracted according to the cross-correlation theory of the random process, a cross-correlation coefficient calculation formula is obtained, and finally cross-correlation feature vectors are formed by combination; sparse decomposition is carried out on the cross-correlation feature vectors through the MOD. The extracting method for features in the hyper-spectral classification is provided from the aspect of the cross-correlation of the random process, good noise immunity and high stability are achieved, and hyper-spectral classification precision is improved.

Description

technical field [0001] The invention belongs to the field of hyperspectral image processing, in particular to a method for extracting spectral vector cross-correlation features in hyperspectral image classification. Background technique [0002] The hyperspectral image organically integrates the traditional spatial dimension information and spectral dimension information. While acquiring the scene space image, it can obtain the continuous spectrum of all objects in the scene, so as to achieve the goal of classification and recognition based on the spectral characteristics of the object. Compared with traditional panchromatic and multi-spectral remote sensing, due to its high spectral resolution and spatial resolution, it can effectively combine spectral information and spatial information, and the amount of data is abundant, and the data model is easy to describe. Classification has outstanding advantages. With the development and maturity of hyperspectral imaging technolog...

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06K9/66G06K9/46
CPCG06F18/24133G06V30/194
Inventor 刘治唐波聂明钰孙育霖宿方琪肖晓燕张伟
Owner SHANDONG UNIV
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