Ratnasingam Sivalogeswaran, Collins Steve, Hernández-Andrés Javier
Institute of Image Communication and Information Processing, Department of Electronic Engineering, Shanghai Jiao Tong University, Shanghai 200240, China.
J Opt Soc Am A Opt Image Sci Vis. 2010 Oct 1;27(10):2198-207. doi: 10.1364/JOSAA.27.002198.
The apparent color of an object within a scene depends on the spectrum of the light illuminating the object. However, recording an object's color independent of the illuminant spectrum is important in many machine vision applications. In this paper the performance of a blackbody-model-based color constancy algorithm that requires four sensors with different spectral responses is investigated under daylight illumination. In this investigation sensor noise was modeled as gaussian noise, and the responses were quantized using different numbers of bits. A projection-based algorithm whose output is invariant to illuminant is investigated to improve the results that are obtained. The performance of both of these algorithms is then improved by optimizing the spectral sensitivities of the four sensors using freely available CIE standard daylight spectra and a set of lightness-normalized Munsell reflectance data. With the optimized sensors the performance of both algorithms is shown to be comparable to the human visual system. However, results obtained with measured daylight spectra show that the standard daylights may not be sufficiently representative of measured daylight for optimization with the standard daylight to lead to a reliable set of optimum sensor characteristics.
场景中物体的表观颜色取决于照亮该物体的光的光谱。然而,在许多机器视觉应用中,记录与光源光谱无关的物体颜色非常重要。本文研究了一种基于黑体模型的颜色恒常性算法的性能,该算法需要四个具有不同光谱响应的传感器,且研究是在日光照明条件下进行的。在该研究中,传感器噪声被建模为高斯噪声,并且使用不同的位数对响应进行量化。研究了一种基于投影的算法,其输出对光源具有不变性,以改进所获得的结果。然后,通过使用免费可得的CIE标准日光光谱和一组明度归一化的孟塞尔反射率数据来优化四个传感器的光谱灵敏度,从而提高这两种算法的性能。使用优化后的传感器,这两种算法的性能均显示出与人类视觉系统相当。然而,用实测日光光谱获得的结果表明,标准日光对于用标准日光进行优化可能不足以充分代表实测日光,从而无法得出一组可靠的最佳传感器特性。