Abstract
Neural Radiance Fields (NeRFs) have recently emerged as a popular option for photo-realistic object capture due to their ability to faithfully capture high-fidelity volumetric content even from handheld video input. Although much research has been devoted to efficient optimization leading to real-time training and rendering, options for interactive editing NeRFs remain limited. We present a very simple but effective neural network architecture that is fast and efficient while maintaining a low memory footprint. This architecture can be incrementally guided through user-friendly image-based edits. Our representation allows straightforward object selection via semantic feature distillation at the training stage. More importantly, we propose a local 3D-aware image context to facilitate view-consistent image editing that can then be distilled into fine-tuned NeRFs, via geometric and appearance adjustments. We evaluate our setup on a variety of examples to demonstrate appearance and geometric edits and report 10-30× speedup over concurrent work focusing on text-guided NeRF editing. Video results and code can be found on our project webpage at https://proteusnerf.github.io.
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Wang, B., Shekhar Dutt, N., & Mitra, N. J. (2024). ProteusNeRF: Fast Lightweight NeRF Editing using 3D-Aware Image Context. Proceedings of the ACM on Computer Graphics and Interactive Techniques, 7(1). https://doi.org/10.1145/3651290
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