论文标题
一种新型的固有图像分解方法,用于恢复摄影测量处理中的空中图像的反照率
A Novel Intrinsic Image Decomposition Method to Recover Albedo for Aerial Images in Photogrammetry Processing
论文作者
论文摘要
从摄影测量图像中恢复表面反照率,以实现逼真的渲染和合成环境,可以极大地促进其在VR/AR/MR/MR和数字双胞胎中的下游应用。来自标准摄影测量管道的纹理3D模型是这些应用的次优,因为这些纹理直接衍生自图像,这些图像本质上嵌入了空间和时间变化的环境照明信息,例如太阳照明,方向,方向,使表面的不同外观造成了不同的模型,从而使3D呈现在3D呈现综合灯光下的现象较少。另一方面,由于反照率图像通过环境照明而变化较小,因此它可以使基本的摄影测量处理受益。在本文中,我们攻击了用于摄影测量过程的空中图像的反照率恢复问题,并通过增强的特征匹配和致密匹配来证明反照率恢复对摄影测量数据处理的好处。为此,我们在自然照明条件下提出了一个图像形成模型。然后,我们通过利用典型的摄影测量产物作为几何形状的初始近似来得出反向模型来估计反照率。估计的反照率图像以固有图像分解,重新定义,特征匹配和密集的匹配/点云生成结果测试。合成和现实世界实验都表明,我们的方法表现优于现有方法,并且可以增强摄影测量处理。
Recovering surface albedos from photogrammetric images for realistic rendering and synthetic environments can greatly facilitate its downstream applications in VR/AR/MR and digital twins. The textured 3D models from standard photogrammetric pipelines are suboptimal to these applications because these textures are directly derived from images, which intrinsically embedded the spatially and temporally variant environmental lighting information, such as the sun illumination, direction, causing different looks of the surface, making such models less realistic when used in 3D rendering under synthetic lightings. On the other hand, since albedo images are less variable by environmental lighting, it can, in turn, benefit basic photogrammetric processing. In this paper, we attack the problem of albedo recovery for aerial images for the photogrammetric process and demonstrate the benefit of albedo recovery for photogrammetry data processing through enhanced feature matching and dense matching. To this end, we proposed an image formation model with respect to outdoor aerial imagery under natural illumination conditions; we then, derived the inverse model to estimate the albedo by utilizing the typical photogrammetric products as an initial approximation of the geometry. The estimated albedo images are tested in intrinsic image decomposition, relighting, feature matching, and dense matching/point cloud generation results. Both synthetic and real-world experiments have demonstrated that our method outperforms existing methods and can enhance photogrammetric processing.