Pixel-by-pixel Mean Opinion Score (pMOS) for No-Reference Image Quality Assessment
Wook-Hyung Kim, Cheul-hee Hahm, Anant Baijal, Namuk Kim, Ilhyun Cho, and Jayoon Koo

TL;DR
This paper introduces a novel deep-learning based no-reference image quality assessment method that estimates pixel-level MOS (pMOS), region importance, and overall image quality, aligning well with human visual perception.
Contribution
It presents a new algorithm capable of measuring pixel-level MOS in addition to image-level scores, addressing a key limitation of existing IQA methods.
Findings
pMOS provides detailed pixel-wise quality mapping
The method outperforms existing IQA techniques in accuracy
ROI weights improve overall image quality assessment
Abstract
Deep-learning based techniques have contributed to the remarkable progress in the field of automatic image quality assessment (IQA). Existing IQA methods are designed to measure the quality of an image in terms of Mean Opinion Score (MOS) at the image-level (i.e. the whole image) or at the patch-level (dividing the image into multiple units and measuring quality of each patch). Some applications may require assessing the quality at the pixel-level (i.e. MOS value for each pixel), however, this is not possible in case of existing techniques as the spatial information is lost owing to their network structures. This paper proposes an IQA algorithm that can measure the MOS at the pixel-level, in addition to the image-level MOS. The proposed algorithm consists of three core parts, namely: i) Local IQA; ii) Region of Interest (ROI) prediction; iii) High-level feature embedding. The Local IQA…
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Taxonomy
TopicsImage and Video Quality Assessment · Advanced Image Fusion Techniques · Visual Attention and Saliency Detection
