Method for recovering hyperspectral data by combining space and spectral domains based on compressive sensing
A compressed sensing and spatial spectral domain technology, which is applied in the field of joint recovery of hyperspectral data in the spatial spectral domain, low-rate sampling and recovery, and can solve the problem that the Gaussian random matrix is difficult to achieve with hardware, high cost, and does not jointly consider the spatial correlation of hyperspectral images. properties and spectral domain correlations
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[0039] refer to figure 1 , the specific implementation steps of the present invention are as follows:
[0040] Step 1: Design the sampling matrix according to the principle of spectral imaging:
[0041] 1.1) Given a spectral imaging system such as figure 2 As shown, where L1 is the telescopic objective lens, used to receive the reflected light from the ground; S is the slit, used to control the reflected light in a certain area of the ground to enter the imaging system; L2 is the collimator, used to convert the incident light passing through the slit It becomes parallel light; Prism is a spectroscopic device, which is used to divide the incident light into different spectral segments; L3 is an imaging objective lens, which is used to image the incident light of different spectral bands on the CCD;
[0042] 1.2) The operating wavelength range of a given spectral imaging system is λ 1 ~λ 2 , and the number of imaging bands is K, then the spectral resolution of the spectra...
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