GN-FR:Generalizable Neural Radiance Fields for Flare Removal
Gopi Raju Matta, Rahul Siddartha, Rongali Simhachala Venkata Girish,, Sumit Sharma, Kaushik Mitra

TL;DR
This paper introduces GN-FR, a novel neural radiance field framework that leverages multi-view images to effectively remove lens flare artifacts, generalizing across scenes without requiring paired training data.
Contribution
It presents the first NeRF-based approach for flare removal, incorporating unsupervised learning and a new multi-view flare dataset.
Findings
Successfully removes flare artifacts across diverse scenes
Achieves generalization without scene-specific training
Provides a new dataset with real flare patterns
Abstract
Flare, an optical phenomenon resulting from unwanted scattering and reflections within a lens system, presents a significant challenge in imaging. The diverse patterns of flares, such as halos, streaks, color bleeding, and haze, complicate the flare removal process. Existing traditional and learning-based methods have exhibited limited efficacy due to their reliance on single-image approaches, where flare removal is highly ill-posed. We address this by framing flare removal as a multi-view image problem, taking advantage of the view-dependent nature of flare artifacts. This approach leverages information from neighboring views to recover details obscured by flare in individual images. Our proposed framework, GN-FR (Generalizable Neural Radiance Fields for Flare Removal), can render flare-free views from a sparse set of input images affected by lens flare and generalizes across different…
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Taxonomy
TopicsOil, Gas, and Environmental Issues
MethodsAttention Is All You Need · Adam · Dropout · Position-Wise Feed-Forward Layer · Softmax · Dense Connections · Byte Pair Encoding · Linear Layer · Multi-Head Attention · Label Smoothing
