DiscoverMachine Learning Tech Brief By HackerNoonBuilding Open-Set 3D Representation: Feature Fusion and Geometric-Semantic Merging
Building Open-Set 3D Representation: Feature Fusion and Geometric-Semantic Merging

Building Open-Set 3D Representation: Feature Fusion and Geometric-Semantic Merging

Update: 2025-12-15
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This story was originally published on HackerNoon at: https://hackernoon.com/building-open-set-3d-representation-feature-fusion-and-geometric-semantic-merging.

O3D-SIM is built by projecting 2D masks and embeddings to 3D, using DBSCAN for initial refinement.

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O3D-SIM is built by projecting 2D masks and embeddings to 3D, using DBSCAN for initial refinement.

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Building Open-Set 3D Representation: Feature Fusion and Geometric-Semantic Merging

Building Open-Set 3D Representation: Feature Fusion and Geometric-Semantic Merging

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