CVGRFeb 7, 2025

SC-OmniGS: Self-Calibrating Omnidirectional Gaussian Splatting

arXiv:2502.04734v16 citationsh-index: 8ICLR
Originality Incremental advance
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This addresses the problem of efficient and accurate omnidirectional 3D reconstruction for applications using consumer 360-degree cameras, representing a domain-specific advancement.

The paper tackles 3D reconstruction from 360-degree images by developing SC-OmniGS, a self-calibrating omnidirectional Gaussian splatting system that directly processes spherical images without converting to cube maps, achieving high-quality radiance field reconstruction even with noisy or no prior camera poses.

360-degree cameras streamline data collection for radiance field 3D reconstruction by capturing comprehensive scene data. However, traditional radiance field methods do not address the specific challenges inherent to 360-degree images. We present SC-OmniGS, a novel self-calibrating omnidirectional Gaussian splatting system for fast and accurate omnidirectional radiance field reconstruction using 360-degree images. Rather than converting 360-degree images to cube maps and performing perspective image calibration, we treat 360-degree images as a whole sphere and derive a mathematical framework that enables direct omnidirectional camera pose calibration accompanied by 3D Gaussians optimization. Furthermore, we introduce a differentiable omnidirectional camera model in order to rectify the distortion of real-world data for performance enhancement. Overall, the omnidirectional camera intrinsic model, extrinsic poses, and 3D Gaussians are jointly optimized by minimizing weighted spherical photometric loss. Extensive experiments have demonstrated that our proposed SC-OmniGS is able to recover a high-quality radiance field from noisy camera poses or even no pose prior in challenging scenarios characterized by wide baselines and non-object-centric configurations. The noticeable performance gain in the real-world dataset captured by consumer-grade omnidirectional cameras verifies the effectiveness of our general omnidirectional camera model in reducing the distortion of 360-degree images.

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