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Video s3
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    Presenter(s)
    Zicheng Zhang Headshot
    Display Name
    Zicheng Zhang
    Affiliation
    Affiliation
    Shanghai Jiao Tong University
    Country
    Author(s)
    Display Name
    Zicheng Zhang
    Affiliation
    Affiliation
    Shanghai Jiao Tong University
    Display Name
    Wei Sun
    Affiliation
    Affiliation
    Shanghai Jiao Tong University
    Display Name
    Xiongkuo Min
    Affiliation
    Affiliation
    Shanghai Jiao Tong University
    Display Name
    Wenhan Zhu
    Affiliation
    Affiliation
    Shanghai Jiao Tong University
    Display Name
    Tao Wang
    Affiliation
    Affiliation
    Shanghai Jiao Tong University
    Display Name
    Wei Lu
    Affiliation
    Affiliation
    Shanghai Jiao Tong University
    Display Name
    Guangtao Zhai
    Affiliation
    Affiliation
    Shanghai Jiao Tong University
    Abstract

    Single image super-resolution (SISR) is an ill-posed inverse problem, which may bring artifacts like texture shift, blur, etc. to the reconstructed images, thus it is necessary to evaluate the quality of super-resolution images (SRIs). Note that most existing image quality assessment (IQA) methods were developed for synthetically distorted images, which may not work for SRIs since their distortions are more diverse and complicated. Therefore, in this paper, we propose a no-reference deep-learning image quality assessment method based on frequency maps. The experimental results show that our method outperforms all compared IQA models on the selected three super-resolution quality assessment (SRQA) databases.

    Slides
    • A No-Reference Deep Learning Quality Assessment Method for Super-Resolution Images Based on Frequency Maps (application/pdf)