Convolutional Inverse Problems in Imaging with Convolutional Sparse Models

2019-06-24
Dogan, Didem
Öktem, Sevinç Figen
We develop a fast reconstruction method with convolutional sparse models for general inverse problems involving convolutions. The effectiveness of the reconstruction method is demonstrated for an inverse problem in computational spectral imaging.

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Citation Formats
D. Dogan and S. F. Öktem, “Convolutional Inverse Problems in Imaging with Convolutional Sparse Models,” 2019, Accessed: 00, 2020. [Online]. Available: https://hdl.handle.net/11511/47428.