IEEE Access (Jan 2019)

Visual Attention Guided Pixel-Wise Just Noticeable Difference Model

  • Zhipeng Zeng,
  • Huanqiang Zeng,
  • Jing Chen,
  • Jianqing Zhu,
  • Yun Zhang,
  • Kai-Kuang Ma

DOI
https://doi.org/10.1109/ACCESS.2019.2939569
Journal volume & issue
Vol. 7
pp. 132111 – 132119

Abstract

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The just noticeable difference (JND) models in pixel domain are generally composed of luminance adaptation (LA) and contrast masking (CM), which takes edge masking (EM) and texture masking (TM) into consideration. However, in existing pixel-wise JND models, CM is not evaluated appropriately since they overestimate the masking effect of regular oriented texture regions and neglect the visual attention characteristic of human eyes for the real image. In this work, a novel JND model in pixel domain is proposed, where orderly texture masking (OTM) for regular texture areas (also called orderly texture regions) and disorderly texture masking (DTM) for complex texture areas (also called disorderly texture regions) are presented based on the orientation complexity. Meanwhile, the visual saliency is set as the weighting factor and is incorporated into CM evaluation to enhance JND thresholds. Experimental results indicate that compared with existing relevant JND profiles, the proposed JND model tolerates more distortion in the same perceptual quality, and brings better visual perception in the same level of the injected JND-noise energy.

Keywords