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InsertNeRF: Instilling Generalizability into NeRF with HyperNet Modules

InsertNeRF enhances NeRF generalization by using HyperNet modules to tailor weights to specific scenes, enabling accurate and efficient representation of complex appearances and geometries.

Year
2023
Venue
arXiv 2023
Authors
6
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arxiv.org/abs/2308.13897v2ARXIV-DEFAULT
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Abstract

Generalizing Neural Radiance Fields (NeRF) to new scenes is a significant challenge that existing approaches struggle to address without extensive modifications to vanilla NeRF framework. We introduce InsertNeRF, a method for INStilling gEneRalizabiliTy into NeRF. By utilizing multiple plug-and-play HyperNet modules, InsertNeRF dynamically tailors NeRF's weights to specific reference scenes, transforming multi-scale sampling-aware features into scene-specific representations. This novel design allows for more accurate and efficient representations of complex appearances and geometries. Experiments show that this method not only achieves superior generalization performance but also provides a flexible pathway for integration with other NeRF-like systems, even in sparse input settings. Code will be available https://github.com/bbbbby-99/InsertNeRF.

Authors

6