Abstract

Blind image quality assessment (BIQA) methods aim to predict quality of images as perceived by humans without access to a reference image. Recently, deep learning methods have gained substantial attention in the research community and have proven useful for BIQA. Although previous study of deep neural networks (DNN) methods is presented, some novelty DNN methods, which are recently proposed, are not summarized for BIQA. In this paper, we provide a survey covering various DNN methods for BIQA. First, we systematically analyze the existing DNN-based quality assessment methods according to the role of DNN. Then, we compare the prediction performance of various DNN methods on the synthetic databases (LIVE, TID2013, CSIQ, LIVE multiply distorted) and authentic databases (LIVE challenge), providing important information that can help understand the underlying properties between different DNN methods for BIQA. Finally, we describe some emerging challenges in designing and training DNN-based BIQA, along with few directions that are worth further investigations in the future.

Highlights

  • A Survey of deep neural networks (DNN) Methods for Blind Image Quality AssessmentXIAOHAN YANG1, (Student Member, IEEE), FAN LI 1, (Member, IEEE), AND HANTAO LIU 2, (Member, IEEE)

  • With the development of social media and the increasing demand for imaging services, an enormous amount of visual data is making its way to consumers

  • This paper presents a systematic survey of various DNNbased methods for Blind image quality assessment (BIQA)

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Summary

A Survey of DNN Methods for Blind Image Quality Assessment

XIAOHAN YANG1, (Student Member, IEEE), FAN LI 1, (Member, IEEE), AND HANTAO LIU 2, (Member, IEEE).

INTRODUCTION
PERFORMANCE COMPARISON ON INDIVIDUAL DATABASE
CHALLENGES OF DNN METHODS
Findings
CONCLUSION

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