Abnormity detection method and device on basis of non-negative matrix factorization

A non-negative matrix decomposition and anomaly detection technology, which is applied in image analysis, image data processing, instruments, etc., can solve the problems of high randomness of the algorithm, complex preprocessing process, and difficult implementation

Active Publication Date: 2015-07-15
XIDIAN UNIV
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Problems solved by technology

This method is much more efficient than the PCA algorithm, but it requires a complex preprocessing process, and the algorithm is highly random, and the results obtained have a lot to do with the initial value, so it is not easy to implement

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  • Abnormity detection method and device on basis of non-negative matrix factorization
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Embodiment Construction

[0039] The present invention will be described in detail below in conjunction with the accompanying drawings and specific embodiments.

[0040] An embodiment of the present invention provides an anomaly detection method based on non-negative matrix factorization, such as figure 1 As shown, the method is implemented through the following steps:

[0041] Step 101: Preprocessing the read hyperspectral image to obtain a hyperspectral image with noise removed.

[0042] Specifically, the hyperspectral image is acquired by an image acquisition device such as a camera, and the spectral band table of the hyperspectral image contains 224 bands, and the spectral image data corresponding to each pixel is extracted from the hyperspectral image, and the extracted spectral image data is saved. spectral image data;

[0043] A partial intercepted image with a size of 192×90 pixels is intercepted from all hyperspectral images, and the partial intercepted image is preprocessed, that is, bands ...

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Abstract

The invention discloses an abnormity detection method on the basis of non-negative matrix factorization, which comprises the following steps: preprocessing read hyperspectral images to obtain hyperspectral images which are subjected to noise removal; carrying out vector conversion on the obtained hyperspectral images which are subjected to noise removal so as to obtain a two-dimensional initialization matrix V; then carrying out linear decomposition on the two-dimensional initialization matrix V to generate a random initialization basis matrix W and a coefficient matrix H; according to a non-negative matrix factorization multiplicative algorithm, carrying out iteration on the random initialization basis matrix W and the coefficient matrix H to obtain hyperspectral images with a plurality of wave bands; finally, according to a local self-adaptive kernel density estimation operator, processing the hyperspectral images of which the wave band has the greatest quantity of abnormal information in the hyperspectral images with a plurality of wave bands so as to obtain images of which abnormal targets are detected. The invention also discloses an abnormity detection device on the basis of non-negative matrix factorization. By the abnormity detection method and the abnormity detection device on the basis of non-negative matrix factorization, a great quantity of redundant wave bands and noise information can be eliminated so as to effectively improve efficiency of abnormity detection.

Description

technical field [0001] The invention belongs to the technical field of remote sensing data processing, and in particular relates to an anomaly detection method based on non-negative matrix decomposition and a device thereof. Background technique [0002] Remote sensing technology is one of the major technological breakthroughs that humans have made in earth observation at the end of the 20th century, and hyperspectral remote sensing technology is the frontier technology of current remote sensing. A hyperspectral image is a three-dimensional image that has a spectral dimension in addition to the two-dimensional plane on traditional images. Each band of a hyperspectral image can be regarded as an image independently, and the images of all bands are superimposed to form an image cube. Theoretically, it has been proved that the data of each band between the spectral dimensions in the hyperspectral data cube has a strong correlation, and there is almost no data in the high-dimen...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06T7/00
Inventor 周慧鑫宋尚真秦翰林殷宽曹洪源金浩文庞英名延翔杜娟荣生辉王炳健王慧杰
Owner XIDIAN UNIV
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