arXiv Open Access 2023

InFusionSurf: Refining Neural RGB-D Surface Reconstruction Using Per-Frame Intrinsic Refinement and TSDF Fusion Prior Learning

Seunghwan Lee Gwanmo Park Hyewon Son Jiwon Ryu Han Joo Chae
Lihat Sumber

Abstrak

We introduce InFusionSurf, an innovative enhancement for neural radiance field (NeRF) frameworks in 3D surface reconstruction using RGB-D video frames. Building upon previous methods that have employed feature encoding to improve optimization speed, we further improve the reconstruction quality with minimal impact on optimization time by refining depth information. InFusionSurf addresses camera motion-induced blurs in each depth frame through a per-frame intrinsic refinement scheme. It incorporates the truncated signed distance field (TSDF) Fusion, a classical real-time 3D surface reconstruction method, as a pretraining tool for the feature grid, enhancing reconstruction details and training speed. Comparative quantitative and qualitative analyses show that InFusionSurf reconstructs scenes with high accuracy while maintaining optimization efficiency. The effectiveness of our intrinsic refinement and TSDF Fusion-based pretraining is further validated through an ablation study.

Topik & Kata Kunci

Penulis (5)

S

Seunghwan Lee

G

Gwanmo Park

H

Hyewon Son

J

Jiwon Ryu

H

Han Joo Chae

Format Sitasi

Lee, S., Park, G., Son, H., Ryu, J., Chae, H.J. (2023). InFusionSurf: Refining Neural RGB-D Surface Reconstruction Using Per-Frame Intrinsic Refinement and TSDF Fusion Prior Learning. https://arxiv.org/abs/2303.04508

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2023
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arXiv
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