3D Scene Reconstruction from RGB Images Using Dynamic Graph Convolution for Augmented Reality
Journal
Proceedings - 2022 IEEE Conference on Virtual Reality and 3D User Interfaces Abstracts and Workshops, VRW 2022
Pages
638-639
Date Issued
2022
Author(s)
Abstract
The 3D scene reconstruction task aims to reconstruct the object shape, object pose, and the 3D layout of the scene. In the field of augmented reality, this information is required for interactions with the surroundings. In this paper, we develop a holistic end-to-end scene reconstruction system using only RGB images. We further designed an architecture that can adapt to different types of objects through our graph convolution network during object surface generation. Moreover, a scene-merging strategy is proposed to alleviate the occlusion problem by merging different views continuously. This also allows our system to reconstruct the complete surroundings in a room. © 2022 IEEE.
Subjects
3D Scene Understanding; Augmented Reality; Dynamic Graph Convolution
Other Subjects
Augmented reality; Image reconstruction; Merging; Three dimensional computer graphics; 3D layouts; 3d scene understanding; 3D scenes; 3d scenes reconstruction; Dynamic graph; Dynamic graph convolution; Object pose; Object shape; RGB images; Scene understanding; Convolution
Type
conference paper