Zaidi Q
College of Optometry, State University of New York, New York 10010, USA.
J Opt Soc Am A Opt Image Sci Vis. 1998 Jul;15(7):1767-76. doi: 10.1364/josaa.15.001767.
In everyday scenes, from perceived colors of objects and terrains, observers can simultaneously identify objects across illuminants and identify the nature of the light, e.g., as sunlight or cloudy. As a formal problem, identifying objects and illuminants from the color information provided by sensor responses is underdetermined. It is shown how the problem can be simplified considerably by the empirical result that chromaticities of sets of objects under one illuminant are approximately affine transformations of the chromaticities under spectrally different illuminants. Algorithms that use the affine nature of the correlation as a heuristic can identify objects of identical spectral reflectance across scenes lit simultaneously or successively by different illuminants. The relative chromaticities of the illuminants are estimated as part of the computation. Because information about objects and illuminants is useful in many different tasks, it would be more advantageous for the visual system to use such algorithms to extract both sorts of information from retinal signals than to discount either automatically at an early neural stage.
在日常场景中,通过物体和地形的感知颜色,观察者能够同时在不同光源下识别物体,并辨别光的性质,例如阳光或阴天光。作为一个形式问题,从传感器响应提供的颜色信息中识别物体和光源是不确定的。实验结果表明,一组物体在一种光源下的色度大约是在光谱不同的光源下色度的仿射变换,这一结果可极大简化该问题。利用相关性的仿射性质作为启发式方法的算法,能够识别在不同光源同时或相继照亮的场景中具有相同光谱反射率的物体。在计算过程中会估计光源的相对色度。由于关于物体和光源的信息在许多不同任务中都很有用,因此对于视觉系统而言,使用此类算法从视网膜信号中提取这两种信息,要比在早期神经阶段自动忽略其中任何一种信息更为有利。