GaussianSSC: Triplane-Guided Directional Gaussian Fields for 3D Semantic Completion
arXiv cs.RO / 3/24/2026
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Key Points
- GaussianSSC is a two-stage, grid-native semantic scene completion method that uses triplane guidance while avoiding separate Gaussian sets or replacing the voxel grid entirely.
- The approach introduces Gaussian Anchoring, performing sub-pixel, Gaussian-weighted aggregation over fused FPN features to tighten voxel–image alignment and improve monocular occupancy estimation.
- It learns a per-voxel Gaussian field from point-like voxel features and refines triplane features using a Gaussian–Triplane Refinement module that mixes local (target-centric) gathering with global (source-centric) aggregation.
- GaussianSSC employs directional, anisotropic Gaussian support to better capture surface tangency, scale, and occlusion-aware asymmetry while maintaining triplane efficiency.
- On SemanticKITTI, the method reports improvements over state-of-the-art baselines, including +1.0% Recall, +2.0% Precision, and +1.8% IoU for Stage 1 occupancy, and +1.8% IoU plus +0.8% mIoU for Stage 2 semantic prediction.
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