Abstract

No-reference image quality assessment (NR-IQA) has always been a difficult research problem because digital images may suffer very diverse types of distortions and their contents are extremely various. Moreover, IQA is also a very hot topic in the research community since the number and role of digital images in everyday life is continuously growing. Recently, a huge amount of effort has been devoted to exploiting convolutional neural networks and other deep learning techniques for no-reference image quality assessment. Since deep learning relies on a massive amount of labeled data, utilizing pretrained networks has become very popular in the literature. In this study, we introduce a novel, deep learning-based NR-IQA architecture that relies on the decision fusion of multiple image quality scores coming from different types of convolutional neural networks. The main idea behind this scheme is that a diverse set of different types of networks is able to better characterize authentic image distortions than a single network. The experimental results show that our method can effectively estimate perceptual image quality on four large IQA benchmark databases containing either authentic or artificial distortions. These results are also confirmed in significance and cross database tests.

Highlights

  • The aim of image quality assessment (IQA) is predicting digital images’ perceived quality that is consistent with the human visual system’s (HVS) perception [1]

  • The goal of this study is to introduce a novel deep learning-based No-reference image quality assessment (NR-IQA) method for authentic distortions that relies on decision fusion of multiple quality scores coming from different types of convolutional neural network architectures

  • Since median pooling outperforms average pooling, as one can see in Table 3, this was used in our NR-IQA method for a comparison to other state-of-the-art algorithms

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Summary

Introduction

The aim of image quality assessment (IQA) is predicting digital images’ perceived quality that is consistent with the human visual system’s (HVS) perception [1]. The most obvious way to evaluate the quality of digital images is a subjective user study where quality scores are obtained from human observers in a laboratory environment [2] or a crowdsourcing experiment [3]. Such experiments are expensive, laborious, and time consuming. The aim of objective IQA is constructing computational, mathematical models that can estimate digital images’ human perceptual quality

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