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@@ -38,7 +38,7 @@ <h1>Incremental Multi-Scene Modelling via Continual Neural Graphics Primitives</
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<section id="overview">
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<h2>Abstract</h2>
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<p align="justify">Neural radiance fields (NeRF) have revolutionized photorealistic rendering of novel views for single 3D scenes. Despite their growing popularity and efficiency as 3D resources, NeRFs face scalability challenges due to the need for separate models per scene and the cumulative increase in training time for multiple scenes. The potential for incrementally encoding multiple 3D scenes into a single NeRF model remains largely unexplored. We address this gap by introducing Continual-Neural Graphics Primitives (C-NGP), a novel continual learning framework that integrates multiple scenes incrementally into a single neural radiance field. Using a generative replay approach, C-NGP adapts to new scenes without requiring access to old data. We demonstrate the proposed framework's effectiveness in accommodating multiple scenes through comprehensive evaluations of synthetic and real datasets, producing high-quality novel-view renderings without additional parameters. Furthermore, we show the application of C-NGP in style editing \textit{i.e.} multiple edit styles in the same network. Our supplementary material provides implementation details and dynamic visualizations of the results.</p>
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<p align="justify">Abstract Neural radiance fields (NeRF) have revolutionized photorealistic rendering of novel views for 3D scenes. Despite their growing popularity and efficiency as 3D resources, NeRFs face scalability challenges due to the need for separate models per scene and the cumulative increase in training time for multiple scenes. The potential for incrementally encoding multiple 3D scenes into a single NeRF model remains largely unexplored. To address this, we introduce Continual-Neural Graphics Primitives (C-NGP), a novel continual learning framework that integrates multiple scenes incrementally into a single neural radiance field. Using a generative replay approach, C-NGP adapts to new scenes without requiring access to old data. We demonstrate that C-NGP can accommodate multiple scenes without increasing the parameter count, producing high-quality novel-view renderings on synthetic and real datasets. Notably, C-NGP models all 8 Real-LLFF scenes together, with only a 2.2% drop in PSNR compared to vanilla NeRF, which models each scene independently. Further, it also allows multiple style edits in the same network. The implementation details and dynamic visualizations are provided in the supplementary material.</p>
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