Foster David H, Nascimento Sérgio M C, Amano Kinjiro
Visual and Computational Neuroscience Group, University of Manchester Institute of Science and Technology, Manchester, UK.
Vis Neurosci. 2004 May-Jun;21(3):331-6. doi: 10.1017/s0952523804213335.
If surfaces in a scene are to be distinguished by their color, their neural representation at some level should ideally vary little with the color of the illumination. Four possible neural codes were considered: von-Kries-scaled cone responses from single points in a scene, spatial ratios of cone responses produced by light reflected from pairs of points, and these quantities obtained with sharpened (opponent-cone) responses. The effectiveness of these codes in identifying surfaces was quantified by information-theoretic measures. Data were drawn from a sample of 25 rural and urban scenes imaged with a hyperspectral camera, which provided estimates of surface reflectance at 10-nm intervals at each of 1344 x 1024 pixels for each scene. In computer simulations, scenes were illuminated separately by daylights of correlated color temperatures 4000 K, 6500 K, and 25,000 K. Points were sampled randomly in each scene and identified according to each of the codes. It was found that the maximum information preserved under illuminant changes varied with the code, but for a particular code it was remarkably stable across the different scenes. The standard deviation over the 25 scenes was, on average, approximately 1 bit, suggesting that the neural coding of surface color can be optimized independent of location for any particular range of illuminants.
如果场景中的表面要通过颜色来区分,那么在某种程度上,它们的神经表征理想情况下应随照明颜色的变化而变化很小。研究考虑了四种可能的神经编码:场景中单个点的冯·克里兹缩放锥体响应、由成对的点反射的光产生的锥体响应的空间比率,以及通过锐化(对立锥体)响应获得的这些量。通过信息论方法对这些编码在识别表面方面的有效性进行了量化。数据取自25个城乡场景的样本,这些场景是用高光谱相机成像的,该相机为每个场景的1344×1024像素中的每一个提供了间隔为10纳米的表面反射率估计值。在计算机模拟中,场景分别由相关色温为4000K、6500K和25000K的日光照明。在每个场景中随机采样点,并根据每种编码进行识别。结果发现,在照明变化下保留的最大信息量随编码而变化,但对于特定编码,它在不同场景中非常稳定。25个场景的标准差平均约为1比特,这表明表面颜色的神经编码可以针对任何特定照明范围独立于位置进行优化。