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首页> 外文期刊>IEEE Transactions on Image Processing >Perceptual Evaluation for Multi-Exposure Image Fusion of Dynamic Scenes
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Perceptual Evaluation for Multi-Exposure Image Fusion of Dynamic Scenes

机译:动态场景多曝光图像融合的感知评估

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A common approach to high dynamic range (HDR) imaging is to capture multiple images of different exposures followed by multi-exposure image fusion (MEF) in either radiance or intensity domain. A predominant problem of this approach is the introduction of the ghosting artifacts in dynamic scenes with camera and object motion. While many MEF methods (often referred to as deghosting algorithms) have been proposed for reduced ghosting artifacts and improved visual quality, little work has been dedicated to perceptual evaluation of their deghosting results. Here we first construct a database that contains 20 multi-exposure sequences of dynamic scenes and their corresponding fused images by nine MEF algorithms. We then carry out a subjective experiment to evaluate fused image quality, and find that none of existing objective quality models for MEF provides accurate quality predictions. Motivated by this, we develop an objective quality model for MEF of dynamic scenes. Specifically, we divide the test image into static and dynamic regions, measure structural similarity between the image and the corresponding sequence in the two regions separately, and combine quality measurements of the two regions into an overall quality score. Experimental results show that the proposed method significantly outperforms the state-of-the-art. In addition, we demonstrate the promise of the proposed model in parameter tuning of MEF methods. The subjective database and the MATLAB code of the proposed model are made publicly available at https://github.com/h4nwei/MEF-SSIMd.
机译:高动态范围(HDR)成像的常见方法是捕获多个不同曝光的多个图像,然后在任一辐射或强度域中进行多曝光图像融合(MEF)。这种方法的主要问题是在具有相机和对象运动的动态场景中引入重影伪影。虽然已经提出了许多MEF方法(通常被称为Deghosting算法),以减少重影文物和改善的视觉质量,但很少的作品一直致力于感知结果的悲惨评估。在这里,我们首先构造一个数据库,该数据库包含20个动态场景的多曝光序列及其九个MEF算法的相应融合图像。然后,我们进行了主观实验来评估融合图像质量,并发现MEF的现有客观质量模型都没有提供准确的质量预测。受此激励,我们为MEF的动态场景开发了一个客观质量模型。具体地,我们将测试图像分成静态和动态区域,单独将两个区域的图像和相应序列之间的结构相似性,并将两个区域的质量测量结合成整体质量分数。实验结果表明,该方法明显优于最先进的。此外,我们展示了MEF方法参数调整中所提出的模型的承诺。主观数据库和所提出的模型的MATLAB代码在 https://github.com/h4nwei/mef-simd 上公开可用。

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