Given only a set of images, neural implicit surface representation has shown its capability in 3D surface reconstruction. However, as the nature of per-scene optimization is based on the volumetric rendering of color, previous neural implicit surface reconstruction methods usually fail in low-textured regions, including the floors, walls, etc., which commonly exist for indoor scenes. Being aware of the fact that these low-textured regions usually correspond to planes, without introducing additional ground-truth supervisory signals or making additional assumptions about the room layout, we propose to leverage a novel Pseudo Plane-regularized Signed Distance Field (P$^2$SDF) for indoor scene reconstruction. Specifically, we consider adjacent pixels with similar colors to be on the same pseudo planes. The plane parameters are then estimated on the fly during training by an efficient and effective two-step scheme. Then the signed distances of the points on the planes are regularized by the estimated plane parameters in the training phase. As the unsupervised plane segments are usually noisy and inaccurate, we propose to assign different weights to the sampled points on the plane in plane estimation as well as the regularization loss. The weights come by fusing the plane segments from different views. As the sampled rays in the planar regions are redundant, leading to inefficient training, we further propose a keypoint-guided rays sampling strategy that attends to the informative textured regions with large color variations, and the implicit network gets a better reconstruction, compared with the original uniform ray sampling strategy. Experiments show that our P$^2$SDF achieves competitive reconstruction performance in Manhattan scenes. Further, as we do not introduce any additional room layout assumption, our P$^2$SDF generalizes well to the reconstruction of non-Manhattan scenes.
翻译:鉴于只有一组图像,神经隐含表面代表显示其在3D表面重建中的能力。然而,由于每片表面优化的性质是基于彩色的体积转换,以前的神经隐含表面重建方法通常在低脂区域(包括通常用于室内场景的地板、墙壁等)中失败。意识到这些低脂区域通常与飞机相对应,不引入额外的地面真相监督信号,也不对房间布局作出更多的假设,我们提议利用新型的Pseeudo平面平面计划(P$2,2美元SDF),用于室内现场重建。具体地说,我们认为相邻的具有类似颜色的神经隐含表面重建方法在低脂区域(包括楼层、墙壁等)中通常会失败。意识到这些低脂区域通常与飞机相匹配的距离通常与培训阶段的估计平面参数相符。由于未超度平面平面平面平面平面平面平面平面的平面平面平面平面平面平面平面平面平面平面平面平面平面平面平面平面平面平面平面平面,我们平面平面的平面平面平面平面平面平面平面平面平面平面平面平面平面的平面平面平面平面平面平面平面平面平面平面,我们平面平面平面平面平面平面平面平面平面的平面平面平面平面平面平面平面平面平面平面的平面平面平面平面平面平面的平面平面平面的平面的平面的平面的平面的平面的平面的平面图的平面战略,我们的平面平面平面平面图的平面平面平面图的平面平面平面平面平面平面平面平面平面平面平面平面平面平面平面平面平面平面的平面平面,我们的平面平面平面的平面平面平面平面平面平面平面平面平面平面平面平面平面平面平面平面平面平面平面平面平面平面平面平面平面平面平面</s>