oai:arXiv.org:2407.06613
Computer Science
2024
17.07.2024
Recent studies construct deblurred neural radiance fields (DeRF) using dozens of blurry images, which are not practical scenarios if only a limited number of blurry images are available.
This paper focuses on constructing DeRF from sparse-view for more pragmatic real-world scenarios.
As observed in our experiments, establishing DeRF from sparse views proves to be a more challenging problem due to the inherent complexity arising from the simultaneous optimization of blur kernels and NeRF from sparse view.
Sparse-DeRF successfully regularizes the complicated joint optimization, presenting alleviated overfitting artifacts and enhanced quality on radiance fields.
The regularization consists of three key components: Surface smoothness, helps the model accurately predict the scene structure utilizing unseen and additional hidden rays derived from the blur kernel based on statistical tendencies of real-world; Modulated gradient scaling, helps the model adjust the amount of the backpropagated gradient according to the arrangements of scene objects; Perceptual distillation improves the perceptual quality by overcoming the ill-posed multi-view inconsistency of image deblurring and distilling the pre-filtered information, compensating for the lack of clean information in blurry images.
We demonstrate the effectiveness of the Sparse-DeRF with extensive quantitative and qualitative experimental results by training DeRF from 2-view, 4-view, and 6-view blurry images.
;Comment: Project page: https://dogyoonlee.github.io/sparsederf/
Lee, Dogyoon,Kim, Donghyeong,Lee, Jungho,Lee, Minhyeok,Lee, Seunghoon,Lee, Sangyoun, 2024, Sparse-DeRF: Deblurred Neural Radiance Fields from Sparse View