Specular highlights are commonplace in images, however, methods for detecting them and in turn removing the phenomenon are particularly challenging. A reason for this, is due to the difficulty of creating a dataset for training or evaluation, as in the real-world we lack the necessary control over the environment. Therefore, we propose a novel physically-based rendered LIGHT Specularity (LIGHTS) Dataset for the evaluation of the specular highlight detection task. Our dataset consists of 18 high quality architectural scenes, where each scene is rendered with multiple views. In total we have 2,603 views with an average of 145 views per scene. Additionally we propose a simple aggregation based method for specular highlight detection that outperforms prior work by 3.6% in two orders of magnitude less time on our dataset.
翻译:在图像中,显眼的亮点很常见,但是,探测这些亮点的方法和清除现象的方法特别具有挑战性,其原因之一是难以为培训或评价建立数据集,因为在现实世界中,我们对环境缺乏必要的控制。因此,我们提议为评估显眼亮点探测任务而建立一个基于物理的新颖的亮点(LIightS)数据集。我们的数据集由18个高质量的建筑场景组成,每个场景都有多个视图。我们共有2,603个视图,每个场景平均有145个视图。此外,我们提议一种基于光谱的简单汇总方法,突出探测出比我们数据集上两个数量较少的级比先前工作高出3.6%。