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Color-Aware Natural Scene Statistics for Enhanced No-Reference Assessment of Contrast-Distorted Images
ID:44 View protection:Participant Only Updated time:2025-11-19 09:21:52 Views:85 Oral Presentation

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Abstract
No-reference image quality assessment (NR-IQA)
is crucial for evaluating perceptual quality without reference
images. Existing NR-IQA models for contrast-distorted
images primarily rely on luminance-based Natural Scene
Statistics (NSS), often neglecting chromatic information.
This study introduces two perceptually motivated color
features—colorfulness (CIELab) and color naturalness
(CIELuv)—into the NR-IQA framework. Experiments on
three benchmark databases (TID2013, CID2013, and CSIQ)
demonstrate that incorporating these color features consistently
improves predictive accuracy, with up to 30% higher PLCC
and notable reductions in RMSE. These findings confirm that
color cues complement luminance-based features and enhance
the reliability of contrast-distortion assessment.
Keywords
NR-IQA, NSS, Contrast distortions, image colorfulness, naturalness, perception quality metrics
Speaker
Yusra Al Najjar
Zarqa University

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Important Dates
  • Conference date

    12-29

    2025

    -

    12-31

    2025

  • 12-16 2025

    Draft paper submission deadline

  • 12-30 2025

    Presentation submission deadline

  • 12-30 2025

    Registration deadline

Sponsored By

United Societies of Science

Organized By

扎尔卡大学

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