Unrolled three-operator splitting for parameter-map learning in Low Dose X-ray CT reconstruction
We propose a method for fast and automatic estimation of spatially dependent regularization maps for total variation-based (TV) tomography reconstruction. The estimation is based on two distinct sub-networks, with the first sub-network estimating the regularization parameter-map from the input data...
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Zusammenfassung: | We propose a method for fast and automatic estimation of spatially dependent
regularization maps for total variation-based (TV) tomography reconstruction.
The estimation is based on two distinct sub-networks, with the first
sub-network estimating the regularization parameter-map from the input data
while the second one unrolling T iterations of the Primal-Dual Three-Operator
Splitting (PD3O) algorithm. The latter approximately solves the corresponding
TV-minimization problem incorporating the previously estimated regularization
parameter-map. The overall network is then trained end-to-end in a supervised
learning fashion using pairs of clean-corrupted data but crucially without the
need of having access to labels for the optimal regularization parameter-maps. |
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DOI: | 10.48550/arxiv.2304.08350 |