Lucassen Marcel P, Gevers Theo, Gijsenij Arjan, Dekker Niels
J Opt Soc Am A Opt Image Sci Vis. 2013 Sep 1;30(9):1871-84. doi: 10.1364/JOSAA.30.001871.
We measure the color fidelity of visual scenes that are rendered under different (simulated) illuminants and shown on a calibrated LCD display. Observers make triad illuminant comparisons involving the renderings from two chromatic test illuminants and one achromatic reference illuminant shown simultaneously. Four chromatic test illuminants are used: two along the daylight locus (yellow and blue), and two perpendicular to it (red and green). The observers select the rendering having the best color fidelity, thereby indirectly judging which of the two test illuminants induces the smallest color differences compared to the reference. Both multicolor test scenes and natural scenes are studied. The multicolor scenes are synthesized and represent ellipsoidal distributions in CIELAB chromaticity space having the same mean chromaticity but different chromatic orientations. We show that, for those distributions, color fidelity is best when the vector of the illuminant change (pointing from neutral to chromatic) is parallel to the major axis of the scene's chromatic distribution. For our selection of natural scenes, which generally have much broader chromatic distributions, we measure a higher color fidelity for the yellow and blue illuminants than for red and green. Scrambled versions of the natural images are also studied to exclude possible semantic effects. We quantitatively predict the average observer response (i.e., the illuminant probability) with four types of models, differing in the extent to which they incorporate information processing by the visual system. Results show different levels of performance for the models, and different levels for the multicolor scenes and the natural scenes. Overall, models based on the scene averaged color difference have the best performance. We discuss how color constancy algorithms may be improved by exploiting knowledge of the chromatic distribution of the visual scene.
我们测量在不同(模拟)光源下渲染并显示在校准液晶显示器上的视觉场景的颜色保真度。观察者进行三元组光源比较,涉及同时显示的来自两个彩色测试光源和一个消色差参考光源的渲染图像。使用了四种彩色测试光源:两种沿日光轨迹(黄色和蓝色),两种垂直于日光轨迹(红色和绿色)。观察者选择颜色保真度最佳的渲染图像,从而间接判断与参考光源相比,两个测试光源中哪一个引起的颜色差异最小。我们研究了多色测试场景和自然场景。多色场景是合成的,在CIELAB色度空间中表示具有相同平均色度但不同色度方向的椭球分布。我们表明,对于这些分布,当光源变化向量(从中性指向彩色)与场景色度分布的主轴平行时,颜色保真度最佳。对于我们选择的通常具有更广泛色度分布的自然场景,我们测量到黄色和蓝色光源的颜色保真度高于红色和绿色。还研究了自然图像的加扰版本以排除可能的语义影响。我们用四种类型的模型定量预测平均观察者响应(即光源概率),这些模型在纳入视觉系统信息处理的程度上有所不同。结果显示模型的性能水平不同,多色场景和自然场景的性能水平也不同。总体而言,基于场景平均色差的模型性能最佳。我们讨论了如何通过利用视觉场景色度分布的知识来改进颜色恒常性算法。