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Assessment of multi-exposure HDR image deghosting methods

机译:多重曝光HDR图像反虚像方法的评估

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To avoid motion artefacts when merging multiple exposures into a high dynamic range image, a number of HDR deghosting algorithms have been proposed. However, these algorithms do not work equally well on all types of scenes, and some may even introduce additional artefacts. As the number of proposed deghosting methods is increasing rapidly, there is an immediate need to evaluate them and compare their results. Even though subjective methods of evaluation provide reliable means of testing, they are often cumbersome and need to be repeated for each new proposed method or even its slight modification. Because of that, there is a need for objective quality metrics that will provide automatic means of evaluation of HDR deghosting algorithms. In this work, we explore several computational approaches of quantitative evaluation of multi-exposure HDR deghosting algorithms and demonstrate their results on five state-of-the-art algorithms. In order to perform a comprehensive evaluation, a new dataset consisting of 36 scenes has been created, where each scene provides a different challenge for a deghosting algorithm. The quality of HDR images produced by deghosting method is measured in a subjective experiment and then evaluated using objective metrics. As this, paper is an extension of our conference paper, we add one more objective quality metric, UDQM, as an additional metric in the evaluation. Furthermore, analysis of objective and subjective experiments is performed and explained more extensively in this work. By testing correlation between objective metric and subjective scores, the results show that from the tested metrics, that HDR-VDP-2 is the most reliable metric for evaluating HDR deghosting algorithms. The results also show that for most of the tested scenes, Sen et al.'s deghosting method outperforms other evaluated deghosting methods. The observations based on the obtained results can be used as a vital guide in the. development of new HDR deghosting algorithms, which would be robust to a variety of scenes and could produce high quality results. (C) 2017 Elsevier Ltd. All rights reserved.
机译:为了避免在将多次曝光合并到高动态范围图像中时出现运动伪影,已经提出了许多HDR去虚像算法。但是,这些算法在所有类型的场景上均不能很好地工作,甚至有些算法可能会引入其他伪像。随着提议的反虚幻方法的数量迅速增加,迫切需要评估它们并比较其结果。尽管主观评估方法提供了可靠的测试方法,但它们通常很麻烦,并且对于每种新提议的方法甚至是其稍加修改都需要重复进行。因此,需要一种客观的质量指标,以提供自动评估HDR反虚幻算法的手段。在这项工作中,我们探索了多种评估多曝光HDR图像反虚化算法的计算方法,并在五种最新算法上展示了它们的结果。为了进行全面的评估,已创建了一个由36个场景组成的新数据集,其中每个场景对反虚幻算法都提出了不同的挑战。在主观实验中测量通过反虚幻方法生成的HDR图像的质量,然后使用客观指标进行评估。因此,本文是会议论文的扩展,我们在评估中添加了另一个客观质量指标UDQM作为其他指标。此外,在这项工作中进行了客观和主观实验的分析,并进行了更广泛的解释。通过测试客观指标和主观评分之间的相关性,结果表明,从测试指标来看,HDR-VDP-2是评估HDR反虚幻算法的最可靠指标。结果还表明,对于大多数测试场景,Sen等人的反虚像方法要优于其他评估的反虚像方法。基于获得的结果的观察可以用作其中的重要指导。开发新的HDR去鬼影算法,该算法对各种场景都非常可靠,并且可以产生高质量的结果。 (C)2017 Elsevier Ltd.保留所有权利。

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