The invention discloses an image
compressed sensing algorithm based on multi-scale
wavelet transform and
deep learning, which comprises an
image acquisition stage, to be specific, a convolutional layer is used for sampling, and a sampling vector shown in the specification is obtained; an initial reconstruction stage, to be specific, every 1*1*B<2> in the initial reconstruction vector is rearrangedas a B*B image block by adopting Reshape operation; a depth reconstruction stage, to be specific, four
residual blocks are adopted to deeply reconstruct the image, an initial reconstructed image block vector in the
residual blocks is used as input, and a depth reconstructed image with the size of B*B is output, after depth reconstructed image blocks are obtained, the image blocks are rearranged,and finally a reconstructed image is obtained. In the sampling stage, the
convolutional neural network is used for sampling, so that the sampling efficiency is improved; at the reconstruction end, theconvolutional neural network is used for initial reconstruction, then the residual network is used for deep reconstruction, and multiple networks are used for reconstruction, so that the reconstruction performance is remarkably improved; by using the residual network, the network depth is increased, and meanwhile, an efficient
training effect can still be kept, so that a better reconstruction effect is obtained.