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arxiv 2411.12592 v1 pith:AFAJX4IS submitted 2024-11-15 cs.CV

SPARS3R: Semantic Prior Alignment and Regularization for Sparse 3D Reconstruction

classification cs.CV
keywords alignmentspars3rcloudpointsparsedenseestimationperforms
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Recent efforts in Gaussian-Splat-based Novel View Synthesis can achieve photorealistic rendering; however, such capability is limited in sparse-view scenarios due to sparse initialization and over-fitting floaters. Recent progress in depth estimation and alignment can provide dense point cloud with few views; however, the resulting pose accuracy is suboptimal. In this work, we present SPARS3R, which combines the advantages of accurate pose estimation from Structure-from-Motion and dense point cloud from depth estimation. To this end, SPARS3R first performs a Global Fusion Alignment process that maps a prior dense point cloud to a sparse point cloud from Structure-from-Motion based on triangulated correspondences. RANSAC is applied during this process to distinguish inliers and outliers. SPARS3R then performs a second, Semantic Outlier Alignment step, which extracts semantically coherent regions around the outliers and performs local alignment in these regions. Along with several improvements in the evaluation process, we demonstrate that SPARS3R can achieve photorealistic rendering with sparse images and significantly outperforms existing approaches.

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  1. KC-3DGS: Kurtosis-Constrained Gaussian Splatting for High-Fidelity View Synthesis

    cs.CV 2026-06 unverdicted novelty 5.0

    KC-3DGS adds multi-scale wavelet alignment, kurtosis concentration, and cross-band covariance losses to 3DGS training to reduce oversmoothing and improve perceptual quality in view synthesis.