Pixel Perfect: Relational Image Quality Assessment with Spatially-Aware Distortions
Fadeel Sher Khan, Long N. Le, Abhinau K. Venkataramanan, Seok-Jun Lee, Hamid R. Sheikh
TLDR
A new self-supervised IQA method uses a synthetic distortion engine to provide spatially-aware, relational quality scores and distortion maps.
Key contributions
- Shifts IQA from absolute quality prediction to a relational and directional assessment.
- Utilizes a self-supervised synthetic distortion engine to generate training data, eliminating manual annotation.
- Distortion network produces spatially-aware maps identifying distortion type, intensity, and direction.
- Scoring network uses contrastive learning on ordinally ranked image sets to predict relational quality.
Why it matters
Traditional IQA relies on resource-intensive MOS and lacks localized feedback. This paper offers a more granular, interpretable, and automated approach to IQA. It enables targeted optimization of image processing algorithms without human-labeled quality scores, addressing a key limitation in the field.
Original Abstract
Traditional image quality assessment (IQA) methods rely on mean opinion scores (MOS), which are resource-intensive to collect and fail to provide interpretable, localized feedback on specific image distortions. We overcome these limitations by shifting from absolute quality prediction to a relational and directional assessment. Our approach utilizes a self-supervised synthetic distortion engine to generate training data, eliminating the need for manual annotation. A distortion prediction network is trained with an anti-symmetric objective to produce spatially-aware, disentangled maps that identify the type, intensity, and direction of distortions relative to a reference image. Subsequently, a scoring network is trained via contrastive learning on ordinally ranked image sets to predict a relational quality score. Our method provides a more granular and interpretable approach to IQA for the targeted optimization of image processing algorithms without requiring any human-labeled quality scores.
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