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NIMA: Neural Image Assessment

About

Automatically learned quality assessment for images has recently become a hot topic due to its usefulness in a wide variety of applications such as evaluating image capture pipelines, storage techniques and sharing media. Despite the subjective nature of this problem, most existing methods only predict the mean opinion score provided by datasets such as AVA [1] and TID2013 [2]. Our approach differs from others in that we predict the distribution of human opinion scores using a convolutional neural network. Our architecture also has the advantage of being significantly simpler than other methods with comparable performance. Our proposed approach relies on the success (and retraining) of proven, state-of-the-art deep object recognition networks. Our resulting network can be used to not only score images reliably and with high correlation to human perception, but also to assist with adaptation and optimization of photo editing/enhancement algorithms in a photographic pipeline. All this is done without need for a "golden" reference image, consequently allowing for single-image, semantic- and perceptually-aware, no-reference quality assessment.

Hossein Talebi, Peyman Milanfar• 2017

Related benchmarks

TaskDatasetResultRank
Image Quality AssessmentSPAQ
SRCC0.856
250
Image Quality AssessmentCSIQ
SRC0.649
150
Image Quality AssessmentTID 2013 (test)
Mean SRCC0.944
134
Image Quality AssessmentAGIQA-3K
SRCC0.654
131
Image Quality AssessmentKADID
SRCC53.5
128
Image Quality AssessmentPIPAL
SRCC39.9
123
No-Reference Image Quality AssessmentCSIQ
SROCC0.844
121
Image Quality AssessmentKonIQ
SRCC0.859
119
Blind Image Quality AssessmentFLIVE
SRCC0.467
115
No-Reference Image Quality AssessmentTID 2013
SRCC0.422
105
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