ObjSplat: Geometry-Aware Gaussian Surfels for Active Object Reconstruction
About
Autonomous high-fidelity object reconstruction is fundamental for creating digital assets and bridging the simulation-to-reality gap in robotics. We present ObjSplat, an active reconstruction framework that leverages Gaussian surfels as a unified representation to progressively reconstruct unknown objects with both photorealistic appearance and accurate geometry. Addressing the limitations of conventional opacity or depth-based cues, we introduce a geometry-aware viewpoint evaluation pipeline that explicitly models back-face visibility and occlusion-aware multi-view covisibility, reliably identifying under-reconstructed regions even on geometrically complex objects. Furthermore, to overcome the limitations of greedy planning strategies, ObjSplat employs a next-best-path (NBP) planner that performs multi-step lookahead on a dynamically constructed spatial graph. By jointly optimizing information gain and movement cost, this planner generates globally efficient trajectories. Extensive experiments in simulation and on real-world cultural artifacts demonstrate that ObjSplat produces physically consistent models within minutes, achieving superior reconstruction fidelity and surface completeness while significantly reducing scan time and path length compared to state-of-the-art approaches. Project page: https://li-yuetao.github.io/ObjSplat-page/ .
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| 3D Reconstruction | GSO (train) | PSNR43.65 | 12 | |
| 3D Reconstruction | GSO Novel (test) | PSNR32.35 | 12 | |
| Active 3D Object Reconstruction | 3D Object Reconstruction Dataset 10 Views (Exploration) | CR (%)90.04 | 7 | |
| Active 3D Object Reconstruction | 3D Object Reconstruction Dataset Convergence 30 Views | CR (%)91.89 | 7 | |
| Active 3D Object Reconstruction | 3D Object Reconstruction Dataset 2 Views (Initialization) | CR46.16 | 7 |