Accurate lighting estimation is challenging yet critical to many computer vision and computer graphics tasks such as high-dynamic-range (HDR) relighting. Existing approaches model lighting in either frequency domain or spatial domain which is insufficient to represent the complex lighting conditions in scenes and tends to produce inaccurate estimation. This paper presents NeedleLight, a new lighting estimation model that represents illumination with needlets and allows lighting estimation in both frequency domain and spatial domain jointly. An optimal thresholding function is designed to achieve sparse needlets which trims redundant lighting parameters and demonstrates superior localization properties for illumination representation. In addition, a novel spherical transport loss is designed based on optimal transport theory which guides to regress lighting representation parameters with consideration of the spatial information. Furthermore, we propose a new metric that is concise yet effective by directly evaluating the estimated illumination maps rather than rendered images. Extensive experiments show that NeedleLight achieves superior lighting estimation consistently across multiple evaluation metrics as compared with state-of-the-art methods.
翻译:精确的照明估计对于许多计算机视觉和计算机图形任务,例如高动力射程(HDR)光照等,具有挑战性,但对于许多计算机视觉和计算机图形任务来说至关重要。在频率域或空间域的现有方法模式照明模型不足以代表现场复杂的照明条件,而且往往产生不准确的估计。本文展示了NeileLight,这是一个新的照明估计模型,代表了需要器的照明,并允许在频率域和空间域共同进行照明估计。最理想的门槛功能是达到稀有的需要器,可以减少多余的照明参数,并显示照明代表的高级本地化特性。此外,新的球体运输损失是根据最佳运输理论设计的,该理论指导着在考虑空间信息的同时反向回光显示显示参数。此外,我们提出了一个简明有效的新指标,即直接评价估计的照明地图而不是图像。广泛的实验显示,NeleLight在多个评价指标中实现的更高级的照明估计,与最先进的方法相比较。