InfNeRF: Towards Infinite Scale NeRF Rendering with O(log n) Space Complexity (2403.14376v2)
Abstract: The conventional mesh-based Level of Detail (LoD) technique, exemplified by applications such as Google Earth and many game engines, exhibits the capability to holistically represent a large scene even the Earth, and achieves rendering with a space complexity of O(log n). This constrained data requirement not only enhances rendering efficiency but also facilitates dynamic data fetching, thereby enabling a seamless 3D navigation experience for users. In this work, we extend this proven LoD technique to Neural Radiance Fields (NeRF) by introducing an octree structure to represent the scenes in different scales. This innovative approach provides a mathematically simple and elegant representation with a rendering space complexity of O(log n), aligned with the efficiency of mesh-based LoD techniques. We also present a novel training strategy that maintains a complexity of O(n). This strategy allows for parallel training with minimal overhead, ensuring the scalability and efficiency of our proposed method. Our contribution is not only in extending the capabilities of existing techniques but also in establishing a foundation for scalable and efficient large-scale scene representation using NeRF and octree structures.
- Cernea, D.: Openmvs: Multi-view stereo reconstruction library. City 5(7) (2020)
- CesiumJS: CesiumJS Homepage (2024), https://cesium.com/
- DJI: Terra (2024), https://enterprise.dji.com/dji-terra
- Hoppe, H.: Smooth view-dependent level-of-detail control and its application to terrain rendering. In: Proceedings Visualization’98 (Cat. No. 98CB36276). pp. 35–42. IEEE (1998)
- Luebke, D.: Level of detail for 3D graphics. Morgan Kaufmann (2003)
- Ulrich, T.: Rendering massive terrains using chunked level of detail control. In: Proc. ACM SIGGRAPH 2002 (2002)
- Williams, L.: Pyramidal parametrics. In: Proceedings of the 10th annual conference on Computer graphics and interactive techniques. pp. 1–11 (1983)
- Wu, C.: Towards linear-time incremental structure from motion. In: 2013 International Conference on 3D Vision-3DV 2013. pp. 127–134. IEEE (2013)