论文标题

立方体++照明估计数据集

The Cube++ Illumination Estimation Dataset

论文作者

Ershov, Egor, Savchik, Alex, Semenkov, Illya, Banić, Nikola, Belokopytov, Alexander, Senshina, Daria, Koscević, Karlo, Subašić, Marko, Lončarić, Sven

论文摘要

计算颜色恒定的重要任务是减少场景照明对物体颜色的影响。因此,它是大多数数码相机的图像处理管道的重要组成部分。计算颜色恒定的重要部分之一是照明估计,即估计照明颜色。当提出了一个照明估计方法时,通常通过提供在公开可用数据集图像上获得的误差指标值来报告其精度。但是,随着时间的流逝,许多数据集都有问题,例如图像太少,不适当的图像质量,缺乏场景多样性,缺乏版本跟踪,违反各种假设,违反GDPR调节,缺乏其他拍摄过程信息等。在本文中,提出了一个新的Illumination Inlumination估算数据集,旨在缓解许多问题和不适的问题。它由4890张带有已知照明颜色的图像以及其他语义数据,可以进一步使学习过程更加准确。由于使用SpyderCube颜色目标,对于每个图像,都有两个涵盖不同方向的地面照明记录。因此,该数据集可用于训练和测试执行单个或两次闭合估计的方法。这使其优于许多现有数据集。数据集,较小的版本SimpleCube ++,以及随附的代码,请访问https://github.com/visillect/cubeplusplus/。

Computational color constancy has the important task of reducing the influence of the scene illumination on the object colors. As such, it is an essential part of the image processing pipelines of most digital cameras. One of the important parts of the computational color constancy is illumination estimation, i.e. estimating the illumination color. When an illumination estimation method is proposed, its accuracy is usually reported by providing the values of error metrics obtained on the images of publicly available datasets. However, over time it has been shown that many of these datasets have problems such as too few images, inappropriate image quality, lack of scene diversity, absence of version tracking, violation of various assumptions, GDPR regulation violation, lack of additional shooting procedure info, etc. In this paper, a new illumination estimation dataset is proposed that aims to alleviate many of the mentioned problems and to help the illumination estimation research. It consists of 4890 images with known illumination colors as well as with additional semantic data that can further make the learning process more accurate. Due to the usage of the SpyderCube color target, for every image there are two ground-truth illumination records covering different directions. Because of that, the dataset can be used for training and testing of methods that perform single or two-illuminant estimation. This makes it superior to many similar existing datasets. The datasets, it's smaller version SimpleCube++, and the accompanying code are available at https://github.com/Visillect/CubePlusPlus/.

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