Literature DB >> 28574353

dipIQ: Blind Image Quality Assessment by Learning-to-Rank Discriminable Image Pairs.

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Abstract

Objective assessment of image quality is fundamentally important in many image processing tasks. In this paper, we focus on learning blind image quality assessment (BIQA) models, which predict the quality of a digital image with no access to its original pristine-quality counterpart as reference. One of the biggest challenges in learning BIQA models is the conflict between the gigantic image space (which is in the dimension of the number of image pixels) and the extremely limited reliable ground truth data for training. Such data are typically collected via subjective testing, which is cumbersome, slow, and expensive. Here, we first show that a vast amount of reliable training data in the form of quality-discriminable image pairs (DIPs) can be obtained automatically at low cost by exploiting large-scale databases with diverse image content. We then learn an opinion-unaware BIQA (OU-BIQA, meaning that no subjective opinions are used for training) model using RankNet, a pairwise learning-to-rank (L2R) algorithm, from millions of DIPs, each associated with a perceptual uncertainty level, leading to a DIP inferred quality (dipIQ) index. Extensive experiments on four benchmark IQA databases demonstrate that dipIQ outperforms the state-of-the-art OU-BIQA models. The robustness of dipIQ is also significantly improved as confirmed by the group MAximum Differentiation competition method. Furthermore, we extend the proposed framework by learning models with ListNet (a listwise L2R algorithm) on quality-discriminable image lists (DIL). The resulting DIL inferred quality index achieves an additional performance gain.

Entities:  

Year:  2017        PMID: 28574353     DOI: 10.1109/TIP.2017.2708503

Source DB:  PubMed          Journal:  IEEE Trans Image Process        ISSN: 1057-7149            Impact factor:   10.856


  6 in total

1.  Artifact- and content-specific quality assessment for MRI with image rulers.

Authors:  Ke Lei; Ali B Syed; Xucheng Zhu; John M Pauly; Shreyas S Vasanawala
Journal:  Med Image Anal       Date:  2022-01-20       Impact factor: 8.545

2.  Magnetic Resonance Image Quality Assessment by Using Non-Maximum Suppression and Entropy Analysis.

Authors:  Rafał Obuchowicz; Mariusz Oszust; Marzena Bielecka; Andrzej Bielecki; Adam Piórkowski
Journal:  Entropy (Basel)       Date:  2020-02-16       Impact factor: 2.524

3.  Fusion of Deep Convolutional Neural Networks for No-Reference Magnetic Resonance Image Quality Assessment.

Authors:  Igor Stępień; Rafał Obuchowicz; Adam Piórkowski; Mariusz Oszust
Journal:  Sensors (Basel)       Date:  2021-02-03       Impact factor: 3.576

4.  Cross-Domain Feature Similarity Guided Blind Image Quality Assessment.

Authors:  Chenxi Feng; Long Ye; Qin Zhang
Journal:  Front Neurosci       Date:  2022-01-14       Impact factor: 4.677

5.  A comprehensive review of deep learning-based single image super-resolution.

Authors:  Syed Muhammad Arsalan Bashir; Yi Wang; Mahrukh Khan; Yilong Niu
Journal:  PeerJ Comput Sci       Date:  2021-07-13

6.  Single image super-resolution via Image Quality Assessment-Guided Deep Learning Network.

Authors:  Zhengqiang Xiong; Manhui Lin; Zhen Lin; Tao Sun; Guangyi Yang; Zhengxing Wang
Journal:  PLoS One       Date:  2020-10-29       Impact factor: 3.240

  6 in total

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