diff --git a/assets/thumbnails/jin2024activegs.jpg b/assets/thumbnails/jin2024activegs.jpg new file mode 100644 index 0000000..5f8ccab Binary files /dev/null and b/assets/thumbnails/jin2024activegs.jpg differ diff --git a/awesome_3dgs_papers.yaml b/awesome_3dgs_papers.yaml index f3cf2a3..570b116 100644 --- a/awesome_3dgs_papers.yaml +++ b/awesome_3dgs_papers.yaml @@ -495,6 +495,38 @@ - Project thumbnail: assets/thumbnails/shao2024gausim.jpg publication_date: '2024-12-23T18:58:17+00:00' +- id: jin2024activegs + title: 'ActiveGS: Active Scene Reconstruction using Gaussian Splatting' + authors: Liren Jin, Xingguang Zhong, Yue Pan, Jens Behley, Cyrill Stachniss, Marija + Popović + year: '2024' + abstract: 'Robotics applications often rely on scene reconstructions to enable downstream + tasks. In this work, we tackle the challenge of actively building an accurate + map of an unknown scene using an on-board RGB-D camera. We propose a hybrid map + representation that combines a Gaussian splatting map with a coarse voxel map, + leveraging the strengths of both representations: the high-fidelity scene reconstruction + capabilities of Gaussian splatting and the spatial modelling strengths of the + voxel map. The core of our framework is an effective confidence modelling technique + for the Gaussian splatting map to identify under-reconstructed areas, while utilising + spatial information from the voxel map to target unexplored areas and assist in + collision-free path planning. By actively collecting scene information in under-reconstructed + and unexplored areas for map updates, our approach achieves superior Gaussian + splatting reconstruction results compared to state-of-the-art approaches. Additionally, + we demonstrate the applicability of our active scene reconstruction framework + in the real world using an unmanned aerial vehicle. + + ' + project_page: null + paper: https://arxiv.org/pdf/2412.17769.pdf + code: null + video: null + tags: + - Meshing + - Robotics + - SLAM + thumbnail: assets/thumbnails/jin2024activegs.jpg + publication_date: '2024-12-23T18:29:03+00:00' + date_source: arxiv - id: gao2024cosurfgscollaborative title: CoSurfGS:Collaborative 3D Surface Gaussian Splatting with Distributed Learning for Large Scene Reconstruction