ColabSfM: Collaborative Structure-from-Motion by Point Cloud Registration
By: Johan Edstedt, André Mateus, Alberto Jaenal
Potential Business Impact:
Lets many cameras build one 3D map.
Structure-from-Motion (SfM) is the task of estimating 3D structure and camera poses from images. We define Collaborative SfM (ColabSfM) as sharing distributed SfM reconstructions. Sharing maps requires estimating a joint reference frame, which is typically referred to as registration. However, there is a lack of scalable methods and training datasets for registering SfM reconstructions. In this paper, we tackle this challenge by proposing the scalable task of point cloud registration for SfM reconstructions. We find that current registration methods cannot register SfM point clouds when trained on existing datasets. To this end, we propose a SfM registration dataset generation pipeline, leveraging partial reconstructions from synthetically generated camera trajectories for each scene. Finally, we propose a simple but impactful neural refiner on top of the SotA registration method RoITr that yields significant improvements, which we call RefineRoITr. Our extensive experimental evaluation shows that our proposed pipeline and model enables ColabSfM. Code is available at https://github.com/EricssonResearch/ColabSfM
Similar Papers
A Taxonomy of Structure from Motion Methods
CV and Pattern Recognition
Builds 3D worlds from many pictures.
Dense-SfM: Structure from Motion with Dense Consistent Matching
CV and Pattern Recognition
Creates detailed 3D pictures from many photos.
Mapping Semantic Segmentation to Point Clouds Using Structure from Motion for Forest Analysis
CV and Pattern Recognition
Creates 3D forest maps from pictures for AI.