ASSR-NeRF: Arbitrary-Scale Super-Resolution on Voxel Grid for High-Quality Radiance Fields Reconstruction

arXiv — cs.CVThursday, December 18, 2025 at 5:00:00 AM
  • The Arbitrary-Scale Super-Resolution NeRF (ASSR-NeRF) framework has been introduced to enhance the quality of novel view synthesis (NVS) in 3D scene reconstruction, addressing issues of oversmoothing in high-resolution outputs from low-resolution optimizations. This model employs an attention-based VoxelGridSR approach to perform 3D super-resolution directly on optimized volumes, trained on diverse scenes for improved generalizability.
  • This development is significant as it allows for high-quality radiance field reconstruction, which is crucial for applications in computer graphics, virtual reality, and other fields requiring detailed 3D representations. By refining the volume for unseen scenes, ASSR-NeRF aims to provide consistent multi-view outputs, enhancing the overall visual fidelity.
  • The introduction of ASSR-NeRF reflects a broader trend in artificial intelligence where frameworks are increasingly focused on improving resolution and detail in visual data. This aligns with ongoing advancements in related areas such as dynamic scene reconstruction and video editing, where the demand for high-quality, photorealistic outputs is growing. The integration of innovative techniques across various AI applications highlights a collective push towards more sophisticated and efficient methods in visual computing.
— via World Pulse Now AI Editorial System

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