Abstract

Image quality assessment (IQA) for authentic distortions in the wild is challenging. Though current IQA metrics have achieved decent performance for synthetic distortions, they still cannot be satisfactorily applied to realistic distortions because of the generalization problem. Improving generalization ability is an urgent task to make IQA algorithms serviceable in real-world applications, while relevant research is still rare. Fundamentally, image quality is determined by both distortion degree and intelligibility. However, current IQA metrics mostly focus on the distortion aspect and do not fully investigate the intelligibility, which is crucial for achieving robust quality estimation. Motivated by this, this paper presents a new framework for building highly generalizable image quality model by integrating the intelligibility. We first analyze the relation between intelligibility and image quality. Then we propose a bilateral network to integrate the above two aspects of image quality. During the fusion process, feature selection strategy is further devised to avoid negative transfer. The framework not only catches the conventional distortion features but also integrates intelligibility features properly, based on which a highly generalizable no-reference image quality model is achieved. Extensive experiments are conducted based on five intelligibility tasks, and the results demonstrate that the proposed approach outperforms the state-of-the-art metrics, and the intelligibility task consistently improves metric performance and generalization ability.

Highlights

  • Image quality assessment (IQA) plays a vital role in image acquisition, compression, enhancement, retrieval, etc

  • We propose a bilateral network with an intelligibility enhanced module to fuse intelligibility features with distortion features for building a robust IQA model

  • We first analyzed the relation between intelligibility and image quality

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Summary

Introduction

Image quality assessment (IQA) plays a vital role in image acquisition, compression, enhancement, retrieval, etc. The existing IQA metrics are mainly designed for synthetic distortions and cannot be applied to wild images satisfactorily due to the limited generalization ability. Image quality embodies two aspects: distortion and intelligibility (Abdou and Dusaussoy, 1986). Most IQA algorithms only focus on the distortion measurement and the intelligibility aspect is rarely investigated. We mainly investigate the role of intelligibility in building a highly generalizable IQA model. Intelligibility refers to the ability of an image to provide information to a person or a machine (Abdou and Dusaussoy, 1986), that is, the degree to which the image could be understood. Traditional handcrafted feature-based IQA metrics mainly focus

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