Illuminant Chromaticity from Image Sequences

V. Prinet, Dani Lischinski, M. Werman
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引用次数: 26

Abstract

We estimate illuminant chromaticity from temporal sequences, for scenes illuminated by either one or two dominant illuminants. While there are many methods for illuminant estimation from a single image, few works so far have focused on videos, and even fewer on multiple light sources. Our aim is to leverage information provided by the temporal acquisition, where either the objects or the camera or the light source are/is in motion in order to estimate illuminant color without the need for user interaction or using strong assumptions and heuristics. We introduce a simple physically-based formulation based on the assumption that the incident light chromaticity is constant over a short space-time domain. We show that a deterministic approach is not sufficient for accurate and robust estimation: however, a probabilistic formulation makes it possible to implicitly integrate away hidden factors that have been ignored by the physical model. Experimental results are reported on a dataset of natural video sequences and on the Gray Ball benchmark, indicating that we compare favorably with the state-of-the-art.
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来自图像序列的光源色度
我们从时间序列中估计光源色度,对于由一个或两个主要光源照亮的场景。虽然有许多方法可以从单个图像中估计光源,但迄今为止很少有作品专注于视频,更不用说多光源了。我们的目标是利用时间采集提供的信息,其中物体或相机或光源处于运动状态,以便在不需要用户交互或使用强假设和启发式的情况下估计光源颜色。我们引入了一个简单的基于物理的公式,该公式基于入射光色度在短时空域中是恒定的假设。我们表明,确定性方法不足以进行准确和稳健的估计:然而,概率公式可以隐式地整合掉被物理模型忽略的隐藏因素。在自然视频序列数据集和灰球基准上报告了实验结果,表明我们与最先进的技术进行了比较。
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