RefineSplat applies entropy-aware adaptive masking and density control to 3DGS to remove color- or semantically ambiguous distractors, validated on a new 18-scene Ambiguous wild dataset with claimed SOTA results.
arXiv preprint arXiv:2404.06109 , year=
2 Pith papers cite this work. Polarity classification is still indexing.
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Two-view accumulation per optimizer step is the dominant training lever for hybrid-capture 3DGS, explained by a variance-decomposition framework showing within-regime gradient variance dominates over between-regime variance.
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Rectifying Mask via Entropy for Distractor-Free 3DGS in Ambiguous Scenarios
RefineSplat applies entropy-aware adaptive masking and density control to 3DGS to remove color- or semantically ambiguous distractors, validated on a new 18-scene Ambiguous wild dataset with claimed SOTA results.
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Two-View Accumulation as the Primary Training Lever for Hybrid-Capture Gaussian Splatting: A Variance-Decomposition View of When Gradient Surgery Helps
Two-view accumulation per optimizer step is the dominant training lever for hybrid-capture 3DGS, explained by a variance-decomposition framework showing within-regime gradient variance dominates over between-regime variance.