通过置信度融合进行伪视图增强以实现无位姿稀疏视图重建 / Pseudo-View Enhancement via Confidence Fusion for Unposed Sparse-View Reconstruction
1️⃣ 一句话总结
这篇论文提出了一种新方法,通过双向伪视图修复和场景感知高斯管理策略,有效解决了在仅有极少数拍摄角度且位置未知的困难条件下,重建户外3D场景时出现的几何不合理和漂浮伪影问题,从而显著提升了重建的完整性和质量。
3D scene reconstruction under unposed sparse viewpoints is a highly challenging yet practically important problem, especially in outdoor scenes due to complex lighting and scale variation. With extremely limited input views, directly utilizing diffusion model to synthesize pseudo frames will introduce unreasonable geometry, which will harm the final reconstruction quality. To address these issues, we propose a novel framework for sparse-view outdoor reconstruction that achieves high-quality results through bidirectional pseudo frame restoration and scene perception Gaussian management. Specifically, we introduce a bidirectional pseudo frame restoration method that restores missing content by diffusion-based synthesis guided by adjacent frames with a lightweight pseudo-view deblur model and confidence mask inference algorithm. Then we propose a scene perception Gaussian management strategy that optimize Gaussians based on joint depth-density information. These designs significantly enhance reconstruction completeness, suppress floating artifacts and improve overall geometric consistency under extreme view sparsity. Experiments on outdoor benchmarks demonstrate substantial gains over existing methods in both fidelity and stability.
通过置信度融合进行伪视图增强以实现无位姿稀疏视图重建 / Pseudo-View Enhancement via Confidence Fusion for Unposed Sparse-View Reconstruction
这篇论文提出了一种新方法,通过双向伪视图修复和场景感知高斯管理策略,有效解决了在仅有极少数拍摄角度且位置未知的困难条件下,重建户外3D场景时出现的几何不合理和漂浮伪影问题,从而显著提升了重建的完整性和质量。
源自 arXiv: 2602.21535