3DGR-CT adapts 3D Gaussian splatting with FBP-guided initialization and differentiable CT projection for sparse-view reconstruction, claiming better accuracy and speed than prior methods.
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A densification pipeline for multi-map monocular endoscopic VSLAM that aligns NN LightDepth predictions to CudaSIFT sparse submaps via LMedS, reporting 4.15 mm RMS accuracy on the C3VD phantom dataset.
A survey compiling principles, applications, benchmarks, and challenges of 3D Gaussian Splatting for explicit 3D scene representation.
citing papers explorer
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3DGR-CT: Sparse-View CT Reconstruction with a 3D Gaussian Representation
3DGR-CT adapts 3D Gaussian splatting with FBP-guided initialization and differentiable CT projection for sparse-view reconstruction, claiming better accuracy and speed than prior methods.
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3D Densification for Multi-Map Monocular VSLAM in Endoscopy
A densification pipeline for multi-map monocular endoscopic VSLAM that aligns NN LightDepth predictions to CudaSIFT sparse submaps via LMedS, reporting 4.15 mm RMS accuracy on the C3VD phantom dataset.
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A Survey on 3D Gaussian Splatting
A survey compiling principles, applications, benchmarks, and challenges of 3D Gaussian Splatting for explicit 3D scene representation.