Detail-preserving fidelity refinement for tone mapping

Zhifeng Xie, Sheng Du, Dongjin Huang, Youdong Ding
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引用次数: 0

Abstract

Tone mapping can compress the color range of HDR (high dynamic range) image to produce its LDR (low dynamic range) image. However, without preserving the original scene detail, tone mapping may produce various artifacts and their fidelity will be severely decreased. In this paper, we propose a new detail-preserving refinement method to efficiently improve the fidelity of tone mapping. Its overall flow includes the four key steps: tone initialization, detail extraction, tone reconstruction, and detail restoration. First of all, we employ clustering and decomposition to obtain initial tone layer and detail map. Then we construct detail affinity and gradient guidance to optimize the detail map and reconstruct the new tone layer. Finally, we combine them to produce a high-fidelity result of tone mapping. We demonstrate the effectiveness of the proposed method through a number of experiments in visual comparison, and verify its high-efficiency performance in execution time.
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保留细节的音调映射保真度改进
色调映射可以通过压缩HDR(高动态范围)图像的颜色范围来生成LDR(低动态范围)图像。然而,如果不保留原始场景细节,色调映射可能会产生各种伪影,严重降低其保真度。本文提出了一种新的保留细节的改进方法,以有效地提高色调映射的保真度。其整体流程包括四个关键步骤:音调初始化、细节提取、音调重建和细节恢复。首先,采用聚类和分解方法得到初始色调层和细节图。然后通过构造细节关联和梯度引导来优化细节图,重建新的色调层。最后,我们将它们结合起来产生高保真的音调映射结果。通过大量的视觉对比实验验证了该方法的有效性,并在执行时间上验证了其高效性能。
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