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A Retargeting Approach for Mesopic Vision: Simulation and Compensation

机译:中视视觉的重新定位方法:仿真和补偿

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摘要

Retargeting approaches aim at providing a unified framework for image rendering in which both the intended scene luminance and the actual luminance of the display are taken into account. At the core of any color retargeting method, a color vision model and its inverse are employed. Such a color appearance model should be invertible and cover the entire luminance range of the human visual system. There are not many available models that meet these two conditions. Moreover, most of these models are developed based on psychophysical experiments over color patches, and many have never been used for complex images due to their complexity. In this article, a color retargeting approach based on the mesopic model of Shin et al. tA color appearance model applicable in mesopicvision," Opt. Rev. 11, 272-278 (2004)] is developed to work with complex images. The authors propose an inverse model for complex images to compensate for color appearance changes on dimmed displays viewed in a dark environment. Their experimental results using both quantitative and qualitative evaluations show a discriminative improvement in the perceived color quality for mesopic vision. The proposed method can be incorporated into image retargeting techniques and display rendering mechanisms. (C) 2016 Society for Imaging Science and Technology
机译:重定目标方法旨在为图像渲染提供统一的框架,其中既要考虑预期的场景亮度又要考虑显示器的实际亮度。在任何颜色重定目标方法的核心中,都会使用颜色视觉模型及其逆模型。这种颜色外观模型应该是可逆的,并且应覆盖人类视觉系统的整个亮度范围。满足这两个条件的可用模型并不多。而且,这些模型中的大多数是基于对色块的心理物理实验开发的,由于其复杂性,许多模型从未用于复杂的图像。在本文中,一种基于Shin等人的介观模型的颜色重定向方法。 t开发了一种适用于mesopicvision的颜色外观模型,“ Opt。Rev. 11,272-278(2004)]开发用于处理复杂图像。作者提出了一种复杂图像的逆模型,以补偿在观看中变暗的显示器上的颜色外观变化。 (C)2016年影像科学学会和(C)2016年,在黑暗环境中,他们使用定量和定性评估进行的实验结果表明,对于中视视觉的感知色彩质量有了明显的改善。技术

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  • 来源
    《Journal of Imaging Science and Technology 》 |2016年第1期| 010410.1-010410.12| 共12页
  • 作者单位

    McGill Univ, Ctr Intelligent Machines, Montreal, PQ, Canada|IRYSTEC, Montreal, PQ, Canada;

    IRYSTEC, Montreal, PQ, Canada|Vienna Univ Technol, Fac Informat, Interact Media Syst, A-1040 Vienna, Austria;

    IRYSTEC, Montreal, PQ, Canada|TandemLaunch Inc, Montreal, PQ, Canada;

    Vienna Univ Technol, Fac Informat, Interact Media Syst, A-1040 Vienna, Austria;

    McGill Univ, Ctr Intelligent Machines, Montreal, PQ, Canada;

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