Multivariate compressive sensing reconstruction method based on wavelet HMT (Hidden Markov Tree) model
A compressed sensing reconstruction and multi-variable technology, applied in the field of image processing, can solve problems such as the inability to determine the non-zero support of unknown coefficients, and achieve the effect of improving reconstruction quality, strengthening sparsity, and reducing measurement
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[0040] The present invention will be further described below in conjunction with accompanying drawing.
[0041] refer to figure 1 , the multivariate compressive sensing reconstruction method based on wavelet HMT model of the present invention, comprises the following steps:
[0042] step one , the wavelet transform is performed on the image, the low-frequency transformation coefficients are retained, and the high-frequency transformation coefficients are multivariately compressed and sampled to obtain the multivariate measurement vector Y :
[0043] Y = AX ,in X yes N x Q dimensional high-frequency transform coefficient matrix, A yes K x N dimensional random sensing matrix, where K N ;
[0044] step two , using the existing MPA algorithm to reconstruct the initial image;
[0045] step three , to calculate the posterior state probability that the high-frequency transformation coefficient of the reconstructed image is in a state of large value:
[0046] Es...
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