Corrupted input image detection using cycle-consistency-based uncertainty and bias estimators. (IMAGE)
Caption
(A) Left: The sharp image (ground truth) and the motion blur kernel used. Right: The noise-corrupted input images and the deblurred outputs. (B) Projection of the data onto the 2D space formed by the 2 most important attributes (cycle-consistency-based uncertainty estimators). (C) Detection accuracy of the new method and 2 baseline methods. (D) Estimated and actual uncertainty and the importance of each attribute for classification.
Credit
Ozcan Lab @UCLA.
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Credit must be given to the creator.
License
CC BY