High Dynamic Range Imaging of Dynamic Scenes with Saturation Compensation but without Explicit Motion Compensation

Haesoo Chung, N. Cho
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引用次数: 3

Abstract

High dynamic range (HDR) imaging is a highly challenging task since a large amount of information is lost due to the limitations of camera sensors. For HDR imaging, some methods capture multiple low dynamic range (LDR) images with altering exposures to aggregate more information. However, these approaches introduce ghosting artifacts when significant inter-frame motions are present. Moreover, although multi-exposure images are given, we have little information in severely over-exposed areas. Most existing methods focus on motion compensation, i.e., alignment of multiple LDR shots to reduce the ghosting artifacts, but they still produce unsatisfying results. These methods also rather overlook the need to restore the saturated areas. In this paper, we generate well-aligned multi-exposure features by reformulating a motion alignment problem into a simple brightness adjustment problem. In addition, we propose a coarse-to-fine merging strategy with explicit saturation compensation. The saturated areas are reconstructed with similar well-exposed content using adaptive contextual attention. We demonstrate that our method outperforms the state-of-the-art methods regarding qualitative and quantitative evaluations.
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具有饱和补偿但无显式运动补偿的动态场景的高动态范围成像
高动态范围(HDR)成像是一项极具挑战性的任务,因为由于相机传感器的限制,大量信息丢失。对于HDR成像,一些方法通过改变曝光来捕获多个低动态范围(LDR)图像以聚合更多信息。然而,当存在显著的帧间运动时,这些方法会引入重影伪影。此外,虽然给出了多次曝光图像,但在严重过度曝光的区域,我们几乎没有信息。现有的方法大多侧重于运动补偿,即对多个LDR镜头进行对齐,以减少重影伪影,但效果仍不理想。这些方法也忽略了恢复饱和区域的需要。在本文中,我们通过将运动对齐问题重新表述为简单的亮度调整问题来生成对齐良好的多曝光特征。此外,我们还提出了一种具有显式饱和补偿的由粗到精的合并策略。使用自适应上下文注意,用相似的充分暴露的内容重建饱和区域。我们证明,我们的方法优于关于定性和定量评估的最先进的方法。
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