Learnable Exposure Fusion for Dynamic Scenes
Fahd Bouzaraa, Ibrahim Halfaoui, Onay Urfalioglu

TL;DR
This paper introduces a novel CNN-based method for exposure fusion in dynamic scenes, effectively handling misaligned images and scene motion to produce high-detail images from multiple LDR inputs.
Contribution
The paper presents the first efficient end-to-end CNN approach for exposure fusion in dynamic scenes with misaligned inputs, trained on a specially created dataset.
Findings
The proposed CNN achieves excellent fusion quality in dynamic scenes.
The method handles misaligned LDR images effectively.
Results outperform traditional exposure fusion techniques.
Abstract
In this paper, we focus on Exposure Fusion (EF) [ExposFusi2] for dynamic scenes. The task is to fuse multiple images obtained by exposure bracketing to create an image which comprises a high level of details. Typically, such images are not possible to obtain directly from a camera due to hardware limitations, e.g., a limited dynamic range of the sensor. A major problem of such tasks is that the images may not be spatially aligned due to scene motion or camera motion. It is known that the required alignment by image registration problems is ill-posed. In this case, the images to be aligned vary in their intensity range, which makes the problem even more difficult. To address the mentioned problems, we propose an end-to-end \emph{Convolutional Neural Network} (CNN) based approach to learn to estimate exposure fusion from and Low Dynamic Range (LDR) images depicting different…
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Taxonomy
TopicsImage Enhancement Techniques · Advanced Image Processing Techniques · Advanced Image Fusion Techniques
