A Comprehensive Multi-Illuminant Dataset for Benchmarking of the Intrinsic Image Algorithms

Shida Beigpour, A. Kolb, Sven Kunz
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引用次数: 13

Abstract

In this paper, we provide a new, real photo dataset with precise ground-truth for intrinsic image research. Prior ground-truth datasets have been restricted to rather simple illumination conditions and scene geometries, or have been enhanced using image synthesis methods. The dataset provided in this paper is based on complex multi-illuminant scenarios under multi-colored illumination conditions and challenging cast shadows. We provide full per-pixel intrinsic ground-truth data for these scenarios, i.e. reflectance, specularity, shading, and illumination for scenes as well as preliminary depth information. Furthermore, we evaluate 3 state-of-the-art intrinsic image recovery methods, using our dataset.
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一个综合的多光源数据集用于内在图像算法的基准测试
在本文中,我们提供了一个新的、真实的照片数据集,具有精确的地面真值,用于内在图像的研究。以前的真实数据集仅限于相当简单的照明条件和场景几何,或者已经使用图像合成方法进行了增强。本文提供的数据集是基于多色照明条件下的复杂多光源场景和具有挑战性的阴影。我们为这些场景提供了完整的每像素固有的真实数据,即反射率,镜面,阴影和场景照明以及初步深度信息。此外,我们使用我们的数据集评估了3种最先进的内在图像恢复方法。
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