The invention claims an
image compression sensing method based on a sparse denoising self-coding network, and belongs to the technical field of
deep learning and
image processing. The method comprisesthe following steps: 1, obtaining an original
image signal x as training data, preprocessing the data and completing
signal corrosion to obtain the formula as shown in the specification; 2, buildinga coding sub-network of a sparse denoising self-coding network, and obtaining a measurement value y by the
image signal x through the coding sub-network; 3, setting up a decoding sub-network of the sparse denoising self-coding network, obtaining a reconstructed picture as shown in the specification by the measurement value y through the decoding sub-network, 4, introducing sparsity limitation, andgenerating a
loss function JSDAE (W, b); and 5, carrying out joint training on the coding and decoding sub-networks through a
back propagation algorithm, updating parameters and obtaining an optimalsparse denoising self-coding network. Sparsity limitation is added on the basis of the denoising self-coding network,
image compression and reconstruction are integrated into a unified self-coding network framework, the quality of reconstructed images is effectively improved, and the reconstruction time is greatly shortened.