广义曝光融合权重估计

Mohammed Elamine Moumene, R. Nourine, D. Ziou
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引用次数: 8

摘要

通常的图像传感器只能捕捉到高动态范围场景中大强度间隔的一小部分。这就是为什么交付的图像可能包含曝光不足或曝光过度的像素。克服这个问题的一种流行方法是使用不同的曝光参数拍摄几张图像,然后将它们融合成一张图像。这种曝光融合主要是作为相应像素之间的加权平均来执行的。挑战在于找到产生最佳融合图像质量的权重,并以最少的操作满足实时要求。在本文中,我们提出了一种监督学习方法来估计广义暴露融合权值,并演示了如何使用它们来快速融合任何暴露。通过与相关文献的主客观对比,证明了所提方法的有效性。
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Generalized Exposure Fusion Weights Estimation
Only a small part of the large intensities interval found in high dynamic range scenes can be captured with usual image sensors. This is why delivered images may contain under or overexposed pixels. A popular approach to overcome this problem is to take several images using different exposure parameters, and then fuse them into one single image. This exposure fusion is mostly performed as a weighted average between the corresponding pixels. The challenge is to find weights that produce best fused image quality and in a minimum amount of operations to meet real time requirements. In this paper we present a supervised learning method to estimate generalized exposure fusion weights and we demonstrate how they can be used to fuse any exposures very fast. Subjective and objective comparisons with some relevant works are conducted to prove the effectiveness of the proposed method.
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