DLW learns a neural network weight function via bilevel optimization to improve variational denoising models on heterogeneous complex noise types with claimed transferability.
IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing 14:9435--9449
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A Data-driven Loss Weighting Scheme across Heterogeneous Tasks for Image Denoising
DLW learns a neural network weight function via bilevel optimization to improve variational denoising models on heterogeneous complex noise types with claimed transferability.