IVCVAug 29, 2021

A survey on IQA

arXiv:2109.00347v220 citations
Originality Synthesis-oriented
AI Analysis

It addresses the problem of automating image quality evaluation for image-based applications, but it is incremental as it is a survey paper summarizing existing work.

This survey reviews image quality assessment (IQA) methods, focusing on non-reference deep learning approaches that have recently surpassed reduced-reference and full-reference models in performance.

Image quality assessment(IQA) is of increasing importance for image-based applications. Its purpose is to establish a model that can replace humans for accurately evaluating image quality. According to whether the reference image is complete and available, image quality evaluation can be divided into three categories: full-reference(FR), reduced-reference(RR), and non-reference(NR) image quality assessment. Due to the vigorous development of deep learning and the widespread attention of researchers, several non-reference image quality assessment methods based on deep learning have been proposed in recent years, and some have exceeded the performance of reduced -reference or even full-reference image quality assessment models. This article will review the concepts and metrics of image quality assessment and also video quality assessment, briefly introduce some methods of full-reference and semi-reference image quality assessment, and focus on the non-reference image quality assessment methods based on deep learning. Then introduce the commonly used synthetic database and real-world database. Finally, summarize and present challenges.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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