Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

DeepWSD: Projecting Degradations in Perceptual Space to Wasserstein Distance in Deep Feature Space

About

Existing deep learning-based full-reference IQA (FR-IQA) models usually predict the image quality in a deterministic way by explicitly comparing the features, gauging how severely distorted an image is by how far the corresponding feature lies from the space of the reference images. Herein, we look at this problem from a different viewpoint and propose to model the quality degradation in perceptual space from a statistical distribution perspective. As such, the quality is measured based upon the Wasserstein distance in the deep feature domain. More specifically, the 1DWasserstein distance at each stage of the pre-trained VGG network is measured, based on which the final quality score is performed. The deep Wasserstein distance (DeepWSD) performed on features from neural networks enjoys better interpretability of the quality contamination caused by various types of distortions and presents an advanced quality prediction capability. Extensive experiments and theoretical analysis show the superiority of the proposed DeepWSD in terms of both quality prediction and optimization.

Xingran Liao, Baoliang Chen, Hanwei Zhu, Shiqi Wang, Mingliang Zhou, Sam Kwong• 2022

Related benchmarks

TaskDatasetResultRank
Image Quality AssessmentTID 2013 (test)
Mean SRCC0.874
124
Image Quality AssessmentCSIQ (test)
SRCC0.965
103
Image Quality AssessmentKADID
SRCC0.888
95
Image Quality AssessmentKADID-10k (test)
SRCC0.883
91
Image Quality AssessmentTID 2013 (full)
SROCC0.874
47
Image Quality AssessmentCSIQ (full)
SROCC0.95
38
Image Quality AssessmentLIVE original (test)
PLCC0.961
31
Image Quality AssessmentTID 2008 (full)
PLCC0.9
17
Image Quality AssessmentLIVE (full)
PLCC0.904
17
Image Quality AssessmentPIPAL (full)
PLCC0.503
17
Showing 10 of 10 rows

Other info

Follow for update