Non-negative matrix unmixing method based on space-spectrum combined multi-constraint optimization
A non-negative matrix and multi-constraint technology, applied in the field of remote sensing hyperspectral data processing, can solve problems such as low unmixing accuracy, reduced algorithm performance, and no effective joint space-spectral information
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[0106] combine figure 1 , a space-spectrum joint multi-constraint optimization non-negative matrix unmixing method, the steps are as follows:
[0107] The first step is to estimate the number of hyperspectral endmembers
[0108] (1) Process raw hyperspectral data to obtain model input
[0109] Raw hyperspectral image data Y∈R L×W×H , where L represents the number of hyperspectral bands, W and H represent the width and height of the image space dimension, respectively. The original hyperspectral data Y is scanned pixel by pixel and sorted in the column direction of the spatial dimension row and column direction to form a spectral pixel matrix X=[x 1 ,x 2 ,...,x i ,...,x N ]∈R L×N , where N=W×H represents the number of hyperspectral pixels, x i ∈ R L , represents the i-th spectral pixel, 1≤i≤N.
[0110] (2) Estimation of the number of hyperspectral endmembers
[0111] Using the hyperspectral signal subspace identification algorithm based on the minimum error, the numb...
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