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Main Authors: Li, Yixuan, Chen, Peilin, Zhu, Hanwei, Ding, Keyan, Li, Leida, Wang, Shiqi
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2401.08107
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author Li, Yixuan
Chen, Peilin
Zhu, Hanwei
Ding, Keyan
Li, Leida
Wang, Shiqi
author_facet Li, Yixuan
Chen, Peilin
Zhu, Hanwei
Ding, Keyan
Li, Leida
Wang, Shiqi
contents Opinion-Unaware Blind Image Quality Assessment (OU-BIQA) models aim to predict image quality without training on reference images and subjective quality scores. Thereinto, image statistical comparison is a classic paradigm, while the performance is limited by the representation ability of visual descriptors. Deep features as visual descriptors have advanced IQA in recent research, but they are discovered to be highly texture-biased and lack of shape-bias. On this basis, we find out that image shape and texture cues respond differently towards distortions, and the absence of either one results in an incomplete image representation. Therefore, to formulate a well-round statistical description for images, we utilize the shapebiased and texture-biased deep features produced by Deep Neural Networks (DNNs) simultaneously. More specifically, we design a Shape-Texture Adaptive Fusion (STAF) module to merge shape and texture information, based on which we formulate qualityrelevant image statistics. The perceptual quality is quantified by the variant Mahalanobis Distance between the inner and outer Shape-Texture Statistics (DSTS), wherein the inner and outer statistics respectively describe the quality fingerprints of the distorted image and natural images. The proposed DSTS delicately utilizes shape-texture statistical relations between different data scales in the deep domain, and achieves state-of-the-art (SOTA) quality prediction performance on images with artificial and authentic distortions.
format Preprint
id arxiv_https___arxiv_org_abs_2401_08107
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Deep Shape-Texture Statistics for Completely Blind Image Quality Evaluation
Li, Yixuan
Chen, Peilin
Zhu, Hanwei
Ding, Keyan
Li, Leida
Wang, Shiqi
Computer Vision and Pattern Recognition
Multimedia
Opinion-Unaware Blind Image Quality Assessment (OU-BIQA) models aim to predict image quality without training on reference images and subjective quality scores. Thereinto, image statistical comparison is a classic paradigm, while the performance is limited by the representation ability of visual descriptors. Deep features as visual descriptors have advanced IQA in recent research, but they are discovered to be highly texture-biased and lack of shape-bias. On this basis, we find out that image shape and texture cues respond differently towards distortions, and the absence of either one results in an incomplete image representation. Therefore, to formulate a well-round statistical description for images, we utilize the shapebiased and texture-biased deep features produced by Deep Neural Networks (DNNs) simultaneously. More specifically, we design a Shape-Texture Adaptive Fusion (STAF) module to merge shape and texture information, based on which we formulate qualityrelevant image statistics. The perceptual quality is quantified by the variant Mahalanobis Distance between the inner and outer Shape-Texture Statistics (DSTS), wherein the inner and outer statistics respectively describe the quality fingerprints of the distorted image and natural images. The proposed DSTS delicately utilizes shape-texture statistical relations between different data scales in the deep domain, and achieves state-of-the-art (SOTA) quality prediction performance on images with artificial and authentic distortions.
title Deep Shape-Texture Statistics for Completely Blind Image Quality Evaluation
topic Computer Vision and Pattern Recognition
Multimedia
url https://arxiv.org/abs/2401.08107