Schmitt Carolin, Antic Bozidar, Neculai Andrei, Lee Joo Ho, Geiger Andreas
IEEE Trans Pattern Anal Mach Intell. 2023 Dec;45(12):15850-15869. doi: 10.1109/TPAMI.2023.3314348. Epub 2023 Nov 3.
In this paper, we propose a novel method for joint recovery of camera pose, object geometry and spatially-varying Bidirectional Reflectance Distribution Function (svBRDF) of 3D scenes that exceed object-scale and hence cannot be captured with stationary light stages. The input are high-resolution RGB-D images captured by a mobile, hand-held capture system with point lights for active illumination. Compared to previous works that jointly estimate geometry and materials from a hand-held scanner, we formulate this problem using a single objective function that can be minimized using off-the-shelf gradient-based solvers. To facilitate scalability to large numbers of observation views and optimization variables, we introduce a distributed optimization algorithm that reconstructs 2.5D keyframe-based representations of the scene. A novel multi-view consistency regularizer effectively synchronizes neighboring keyframes such that the local optimization results allow for seamless integration into a globally consistent 3D model. We provide a study on the importance of each component in our formulation and show that our method compares favorably to baselines. We further demonstrate that our method accurately reconstructs various objects and materials and allows for expansion to spatially larger scenes. We believe that this work represents a significant step towards making geometry and material estimation from hand-held scanners scalable.
在本文中,我们提出了一种新颖的方法,用于联合恢复超过物体尺度的3D场景的相机姿态、物体几何形状和空间变化的双向反射分布函数(svBRDF),因此无法用固定光台进行捕捉。输入是由配备点光源进行主动照明的移动手持捕捉系统捕获的高分辨率RGB-D图像。与之前从手持扫描仪联合估计几何形状和材质的工作相比,我们使用单个目标函数来表述这个问题,该函数可以使用现成的基于梯度的求解器进行最小化。为了便于扩展到大量的观察视图和优化变量,我们引入了一种分布式优化算法,该算法可以重建基于2.5D关键帧的场景表示。一种新颖的多视图一致性正则化器有效地同步相邻关键帧,使得局部优化结果能够无缝集成到全局一致的3D模型中。我们对公式中每个组件的重要性进行了研究,并表明我们的方法优于基线方法。我们进一步证明,我们的方法能够准确地重建各种物体和材质,并允许扩展到空间更大的场景。我们相信,这项工作朝着使手持扫描仪的几何形状和材质估计具有可扩展性迈出了重要一步。