SAD-GS proposes dynamic geo-semantic anchoring via SAD and GSFL to learn reliable 3D semantic Gaussian fields, reporting best performance on LERF-OVS, 3D-OVS, and Mip-NeRF360 for open-vocabulary localization and segmentation.
Sparselgs: Fast language gaus- sian splatting from sparse multi-view images.arXiv preprint arXiv:2412.07258, 2024
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SAD-GS: Learning Reliable 3D Semantic Gaussian Fields via Dynamic Geo-Semantic Anchoring
SAD-GS proposes dynamic geo-semantic anchoring via SAD and GSFL to learn reliable 3D semantic Gaussian fields, reporting best performance on LERF-OVS, 3D-OVS, and Mip-NeRF360 for open-vocabulary localization and segmentation.