Abstract

In photography, the presence of a bright light source often reduces the quality and readability of the resulting image. Light rays reflect and bounce off camera elements, sensor or diaphragm causing unwanted artifacts. These artifacts are generally known as "lens flare" and may have different influences on the photo: reduce contrast of the image (veiling glare), add circular or circular-like effects (ghosting flare), appear as bright rays spreading from light source (starburst pattern), or cause aberrations. All these effects are generally undesirable, as they reduce legibility and aesthetics of the image. In this paper we address the problem of removing or reducing the effect of veiling glare on the image. There are no available large-scale datasets for this problem and no established metrics, so we start by (i) proposing a simple and fast algorithm of generating synthetic veiling glare images necessary for training and (ii) studying metrics used in related image enhancement tasks (dehazing and underwater image enhancement). We select three such no-reference metrics (UCIQE, UIQM and CCF) and show that their improvement indicates better veil removal. Finally, we experiment on neural network architectures and propose a two-branched architecture and a training procedure utilizing structural similarity measure.

Highlights

  • NUMERICAL METHODS AND DATA ANALYSISA.V. Shoshin 1,2, E.A. Shvets 1 1 Kharkevich Institute for Information Transmission Problems, RAS, Bolshoy Karetny per

  • Glare removal is an important area of research in modern image enhancement

  • Underwater and glare removal is that the image degrading effect is distributed differently in these cases: fog effect usually depends on the depth of the pixels of the scene, while glare intensity depends more on the distance to the light source in the image coordinates

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Summary

NUMERICAL METHODS AND DATA ANALYSIS

A.V. Shoshin 1,2, E.A. Shvets 1 1 Kharkevich Institute for Information Transmission Problems, RAS, Bolshoy Karetny per. 19, build., Moscow, 127051, Russia, 2 Moscow Institute of Physics and Technology (State University), Institutsky per.

Introduction
Synthetic data
Related problems and quality metric
Metrics used in dehazing and underwater image enhancement
I1 I2 c1 I1 2 I2 2 c1
Applicability of dehazing algorithms to the removing veiling glare
Applicability of underwater image enhancement algorithms to glare removal
Data synthesis approach
Part 1: Distance matrix computation
1.4: Perform the following subtraction:
Part 3: Mask M synthesis
Neural network model
Experiments – choosing optimal dataset generation parameters
Experiments setup
Experiments with glare radius
Experiments with glare color change parameter
Experiments with mask minimum value
Experiments with SSIM with coefficients
Findings
Conclusion
Full Text
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