Human modeling and relighting are two fundamental problems in computer vision and graphics, where high-quality datasets can largely facilitate related research. However, most existing human datasets only provide multi-view human images captured under the same illumination. Although valuable for modeling tasks, they are not readily used in relighting problems. To promote research in both fields, in this paper, we present UltraStage, a new 3D human dataset that contains more than 2K high-quality human assets captured under both multi-view and multi-illumination settings. Specifically, for each example, we provide 32 surrounding views illuminated with one white light and two gradient illuminations. In addition to regular multi-view images, gradient illuminations help recover detailed surface normal and spatially-varying material maps, enabling various relighting applications. Inspired by recent advances in neural representation, we further interpret each example into a neural human asset which allows novel view synthesis under arbitrary lighting conditions. We show our neural human assets can achieve extremely high capture performance and are capable of representing fine details such as facial wrinkles and cloth folds. We also validate UltraStage in single image relighting tasks, training neural networks with virtual relighted data from neural assets and demonstrating realistic rendering improvements over prior arts. UltraStage will be publicly available to the community to stimulate significant future developments in various human modeling and rendering tasks.
翻译:人类建模和点亮是计算机视觉和图形的两个根本性问题,在计算机视觉和图形中,高质量的数据集可以在很大程度上促进相关研究。然而,大多数现有人类数据集只能提供在同一光照下采集的多视角人类图像。虽然对模拟任务很有价值,但并非很容易用于点亮问题。为了促进这两个领域的研究,我们在本文件中展示了超标准3D人类数据集,即一个新的3D人类数据集,包含在多视和多光化环境中采集的2K以上高品质人类资产。具体地说,我们提供32个以白光和两个梯度照明照亮的周围观点。但大多数现有人类数据集只提供在同一光照光下采集的多视角人类图像。虽然对于模拟任务很有价值,但并非很容易用于重现问题。为了促进这两个领域的研究,我们在本文件中展示了超标准的3D人类数据集,其中含有在多视角和多光化环境下获取的新模型合成的人类资产。我们展示了各种神经资产能够取得极高的捕获性,并且能够代表社区精确的细节,例如,用白色灯光和两个梯度光度照明灯光照亮的亮度照明和刻度照明网络,用以往的图像展示前资产。我们还验证了以往的图像,还展示了以往的图像,用前资产。