Department of Computer Science and Engineering, Sogang University, Seoul 04107, Korea.
Devsisters Corp., Seoul 06019, Korea.
Sensors (Basel). 2019 Nov 9;19(22):4897. doi: 10.3390/s19224897.
In this paper, we present a novel approach for reconstructing 3D geometry from a stream of images captured by a consumer-grade mobile RGB-D sensor. In contrast to previous real-time online approaches that process each incoming image in acquisition order, we show that applying a carefully selected order of (possibly a subset of) frames for pose estimation enables the performance of robust 3D reconstruction while automatically filtering out error-prone images. Our algorithm first organizes the input frames into a weighted graph called the similarity graph. A maximum spanning tree is then found in the graph, and its traversal determines the frames and their processing order. The basic algorithm is then extended by locally repairing the original spanning tree and merging disconnected tree components, if they exist, as much as possible, enhancing the result of 3D reconstruction. The capability of our method to generate a less error-prone stream from an input RGB-D stream may also be effectively combined with more sophisticated state-of-the-art techniques, which further increases their effectiveness in 3D reconstruction.
在本文中,我们提出了一种从消费者级移动 RGB-D 传感器捕获的图像流中重建 3D 几何形状的新方法。与之前实时在线的方法不同,这些方法按采集顺序处理每个传入的图像,我们表明,应用精心选择的(可能是帧的子集)用于姿态估计的帧顺序能够在自动过滤易错图像的同时实现稳健的 3D 重建。我们的算法首先将输入帧组织到称为相似性图的加权图中。然后在图中找到最大生成树,其遍历确定了帧及其处理顺序。然后通过局部修复原始生成树和尽可能多地合并不连通的树组件来扩展基本算法,从而增强 3D 重建的结果。我们的方法从输入的 RGB-D 流中生成错误率较低的流的能力也可以与更复杂的最新技术有效地结合使用,这进一步提高了它们在 3D 重建中的有效性。