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Separating illumination from reflectance in colour imagery

机译:将彩色图像中的照明与反射率分开

摘要

Since more people choose the convenience of colour imaging over traditional grayscale imaging, colour is a very important and useful feature in the computer vision community. However, the changing colour of the object may lead to some problems if the illuminant colour changes, since any colour imaging device’s response to light from imaged scenes depends on three factors: the nature of the illumination incident on the objects, the underlying physical property of the objects, and the sensor sensitivity of the imaging system itself. Therefore, as the urgent demands and challenges for emerging applications and higher quality for existing applications continue to grow, accurate reproduction of the object’s colour becomes a more critical issue. This dissertation mainly addresses the problem of separating the illumination from the reflectance and extracting the accurate colour of the objects. We explore three colour constancy solutions whose final goal is to estimate the illumination colour from the image and recover the original objects’ colour, assuming the scene is lit under one uniform illuminant. Particularly, a simple non-statistical estimation solution is proposed by identifying those gray surfaces upon a new colour coordinate system. For those scenes under multi-illuminations, we address the colour constancy problem by extending the standard Retinex with spatial edges that can be detected using a stereo vision technique. The basic idea of stereo vision is to infer the 3D structure and arrangement of a scene from two or more images captured at different viewpoints simultaneously, which is obviously impractical. Then we present a novel hybrid colour constancy solution for a single image under multi-illuminants. An efficient way of representing accurate colour is colour spectra. To reduce storage requirements and processing time, the finite dimensional model is applied to find the basis vectors and the corresponding coefficients. In addition to principal component analysis (PCA) and independent component analysis (ICA), two other nonnegative techniques, Nonnegative Matrix Factorization and Nonnegative ICA, are also tried. We also propose that the pseudo-inverse of the basis derived from these two nonnegative techniques can be used as physically realizable camera sensors.
机译:由于越来越多的人选择彩色成像而不是传统的灰度成像,因此彩色是计算机视觉社区中非常重要和有用的功能。但是,如果光源的颜色发生变化,则对象颜色的变化可能会导致一些问题,因为任何彩色成像设备对来自成像场景的光的响应都取决于三个因素:入射在对象上的照明的性质,对象的基本物理特性。物体以及成像系统本身的传感器灵敏度。因此,随着对新兴应用程序的紧迫需求和挑战以及对现有应用程序的更高质量的要求不断增长,对象颜色的准确再现成为一个更加关键的问题。本论文主要解决了将照明与反射率分离并提取物体准确颜色的问题。我们探索了三种颜色恒定性解决方案,它们的最终目标是从图像中估计照明颜色并恢复原始对象的颜色(假设场景在一个统一的光源下照明)。特别地,通过在新的颜色坐标系上识别那些灰色表面,提出了一种简单的非统计估计解决方案。对于多照明下的那些场景,我们通过扩展标准Retinex的空间边缘来解决色彩恒定性问题,这些空间边缘可以使用立体视觉技术检测到。立体视觉的基本思想是从同时在不同视点捕获的两个或更多图像推断场景的3D结构和布置,这显然是不切实际的。然后,我们为多光源下的单幅图像提供了一种新颖的混合色彩恒定性解决方案。表示准确颜色的有效方法是色谱。为了减少存储需求和处理时间,应用有限维模型来查找基向量和相应的系数。除了主成分分析(PCA)和独立成分分析(ICA)之外,还尝试了其他两种非负性技术,即非负矩阵分解和非负ICA。我们还建议,从这两种非负技术派生的基础的伪逆可以用作可物理实现的相机传感器。

著录项

  • 作者

    Xiong Weihua;

  • 作者单位
  • 年度 2007
  • 总页数
  • 原文格式 PDF
  • 正文语种 English
  • 中图分类

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