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Projected Distribution Loss for Image Enhancement

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Features obtained from object recognition CNNs have been widely used for measuring perceptual similarities between images. Such differentiable metrics can be used as perceptual learning losses to train image enhancement models. However, the choice of the distance function between input and target features may have a consequential impact on the performance of the trained model. While using the norm of the difference between extracted features leads to limited hallucination of details, measuring the distance between distributions of features may generate more textures; yet also more unrealistic details and artifacts. In this paper, we demonstrate that aggregating 1D-Wasserstein distances between CNN activations is more reliable than the existing approaches, and it can significantly improve the perceptual performance of enhancement models. More explicitly, we show that in imaging applications such as denoising, super-resolution, demosaicing, deblurring and JPEG artifact removal, the proposed learning loss outperforms the current state-of-the-art on reference-based perceptual losses. This means that the proposed learning loss can be plugged into different imaging frameworks and produce perceptually realistic results.

Mauricio Delbracio, Hossein Talebi, Peyman Milanfar• 2020

Related benchmarks

TaskDatasetResultRank
Image Quality AssessmentCSIQ
SRC0.926
192
Image Quality AssessmentKADID
SRCC0.829
164
Image Quality AssessmentPIPAL
SRCC0.554
159
Image Quality AssessmentLIVE
SRC0.943
127
Image Quality AssessmentTID 2013
PLCC0.848
55
Image Quality Assessmentmedical
PLCC0.699
15
Image Quality AssessmentScreen
PLCC0.756
15
Image Quality AssessmentInfrared
PLCC0.795
15
Image Quality AssessmentNeutron
PLCC0.752
15
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