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GaussianSSC: Triplane-Guided Directional Gaussian Fields for 3D Semantic Completion

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We present \emph{GaussianSSC}, a two-stage, grid-native and triplane-guided approach to semantic scene completion (SSC) that injects the benefits of Gaussians without replacing the voxel grid or maintaining a separate Gaussian set. We introduce \emph{Gaussian Anchoring}, a sub-pixel, Gaussian-weighted image aggregation over fused FPN features that tightens voxel--image alignment and improves monocular occupancy estimation. We further convert point-like voxel features into a learned per-voxel Gaussian field and refine triplane features via a triplane-aligned \emph{Gaussian--Triplane Refinement} module that combines \emph{local gathering} (target-centric) and \emph{global aggregation} (source-centric). This directional, anisotropic support captures surface tangency, scale, and occlusion-aware asymmetry while preserving the efficiency of triplane representations. On SemanticKITTI~\cite{behley2019semantickitti}, GaussianSSC improves Stage~1 occupancy by +1.0\% Recall, +2.0\% Precision, and +1.8\% IoU over state-of-the-art baselines, and improves Stage~2 semantic prediction by +1.8\% IoU and +0.8\% mIoU.

Ruiqi Xian, Jing Liang, He Yin, Xuewei Qi, Dinesh Manocha• 2026

Related benchmarks

TaskDatasetResultRank
Semantic Scene CompletionSemanticKITTI (test)
SSC mIoU17.1
67
Semantic Occupancy PredictionSemanticKITTI (test)
mIoU61.2
47
Semantic Scene CompletionSemanticKITTI (val)
IoU53.2
4
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