Improved Image Selection for Stack-Based HDR Imaging
Peter van Beek

TL;DR
This paper introduces a fully automatic, fast, and more accurate method for selecting images in stack-based HDR imaging, improving the quality of HDR results across diverse scenes.
Contribution
A novel automatic image selection method for HDR imaging that enhances accuracy and speed compared to existing approaches.
Findings
Improved HDR image quality measured by ground truth metrics
Faster image acquisition process
Better scene coverage in challenging conditions
Abstract
Stack-based high dynamic range (HDR) imaging is a technique for achieving a larger dynamic range in an image by combining several low dynamic range images acquired at different exposures. Minimizing the set of images to combine, while ensuring that the resulting HDR image fully captures the scene's irradiance, is important to avoid long image acquisition and post-processing times. The problem of selecting the set of images has received much attention. However, existing methods either are not fully automatic, can be slow, or can fail to fully capture more challenging scenes. In this paper, we propose a fully automatic method for selecting the set of exposures to acquire that is both fast and more accurate. We show on an extensive set of benchmark scenes that our proposed method leads to improved HDR images as measured against ground truth using the mean squared error, a pixel-based…
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