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鲁棒多曝光图像融合:一种结构补丁分解方法。

Robust Multi-Exposure Image Fusion: A Structural Patch Decomposition Approach.

出版信息

IEEE Trans Image Process. 2017 May;26(5):2519-2532. doi: 10.1109/TIP.2017.2671921. Epub 2017 Feb 20.

DOI:10.1109/TIP.2017.2671921
PMID:28237928
Abstract

We propose a simple yet effective structural patch decomposition approach for multi-exposure image fusion (MEF) that is robust to ghosting effect. We decompose an image patch into three conceptually independent components: signal strength, signal structure, and mean intensity. Upon fusing these three components separately, we reconstruct a desired patch and place it back into the fused image. This novel patch decomposition approach benefits MEF in many aspects. First, as opposed to most pixel-wise MEF methods, the proposed algorithm does not require post-processing steps to improve visual quality or to reduce spatial artifacts. Second, it handles RGB color channels jointly, and thus produces fused images with more vivid color appearance. Third and most importantly, the direction of the signal structure component in the patch vector space provides ideal information for ghost removal. It allows us to reliably and efficiently reject inconsistent object motions with respect to a chosen reference image without performing computationally expensive motion estimation. We compare the proposed algorithm with 12 MEF methods on 21 static scenes and 12 deghosting schemes on 19 dynamic scenes (with camera and object motion). Extensive experimental results demonstrate that the proposed algorithm not only outperforms previous MEF algorithms on static scenes but also consistently produces high quality fused images with little ghosting artifacts for dynamic scenes. Moreover, it maintains a lower computational cost compared with the state-of-the-art deghosting schemes.

摘要

我们提出了一种简单而有效的用于多曝光图像融合(MEF)的结构补丁分解方法,该方法对重影效应具有鲁棒性。我们将图像补丁分解为三个概念上独立的分量:信号强度、信号结构和平均强度。在分别融合这三个分量后,我们重建所需的补丁并将其放回融合图像中。这种新颖的补丁分解方法在许多方面使多曝光图像融合受益。首先,与大多数逐像素的多曝光图像融合方法不同,所提出的算法不需要后处理步骤来提高视觉质量或减少空间伪影。其次,它联合处理RGB颜色通道,从而产生具有更生动色彩外观的融合图像。第三且最重要的是,补丁向量空间中信号结构分量的方向为去除重影提供了理想信息。它使我们能够可靠且高效地拒绝相对于所选参考图像不一致的物体运动,而无需执行计算成本高昂的运动估计。我们在21个静态场景上,将所提出的算法与12种多曝光图像融合方法进行比较,并在19个动态场景(包括相机和物体运动)上与12种去重影方案进行比较。大量实验结果表明,所提出的算法不仅在静态场景上优于先前的多曝光图像融合算法,而且在动态场景中始终能产生高质量的融合图像,且几乎没有重影伪影。此外,与最先进的去重影方案相比,它保持了较低的计算成本。

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