Toward Real Flare Removal: A Comprehensive Pipeline and A New Benchmark
Zheyan Jin, Shiqi Chen, Huajun Feng, Zhihai Xu, Yueting Chen

TL;DR
This paper introduces a comprehensive pipeline for generating diverse flare datasets and a new benchmark, improving the training and evaluation of flare removal methods in low-light images.
Contribution
It presents a novel methodology for creating realistic flare data pairs and a real-shot processing pipeline, enhancing dataset diversity and evaluation accuracy.
Findings
Enhanced flare dataset diversity
Improved flare removal performance
Better evaluation system for real flare images
Abstract
Photographing in the under-illuminated scenes, the presence of complex light sources often leave strong flare artifacts in images, where the intensity, the spectrum, the reflection, and the aberration altogether contribute the deterioration. Besides the image quality, it also influence the performance of down-stream visual applications. Thus, removing the lens flare and ghosts is a challenge issue especially in low-light environment. However, existing methods for flare removal mainly restricted to the problems of inadequate simulation and real-world capture, where the categories of scattered flares are singular and the reflected ghosts are unavailable. Therefore, a comprehensive deterioration procedure is crucial for constructing the dataset of flare removal. Based on the theoretical analysis and real-world evaluation, we propose a well-developed methodology for generating the…
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Taxonomy
TopicsImage Enhancement Techniques · Advanced Image Processing Techniques · Advanced Vision and Imaging
