Regularized high-order statistics based hyperspectral space multi-target detection method
A technology of high-order statistics and detection methods, which is applied in the field of hyperspectral remote sensing image target detection, and can solve the problem of not using high-order statistics of data.
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[0051] In order to better understand the technical solution of the present invention, the embodiments of the present invention will be further described below in conjunction with the accompanying drawings:
[0052] The present invention is realized under the MATLAB R2010a language environment. After the computer reads the hyperspectral remote sensing image data, it obtains a data cube. First, the data is de-averaged to make the mean value of the data zero, and then the data is whitened to remove the correlation of the data. The detection process can be regarded as a filtering process. Spectral curve x=[x 1 , x 2 ,...,x M ] T As the input of the filter, the filter weight vector w=[w 1 ,w 2 ,...,w M ] T and the product w of the input x T x as output. Set the high-order statistics of the output data as the objective function, find the optimal weight vector w, and add a negative regularization term to minimize the high-order statistics of the output data, and the selecti...
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