Improving DCP Haze Removal Scheme by Parameter Setting and Adaptive Gamma Correction

C. Hsieh, Yi-Hung Chang
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引用次数: 3

Abstract

Recently, single-image haze removal based on the dark channel prior (DCP), originally proposed by He et. al., has attracted much attention in the image restoration community. This dehazing algorithm, called the DCP scheme here, is well-known to have four main problems in its dehazed images: artifacts, hue distortion, color over-saturation, and halos. In this paper, an improved DCP (IDCP) is proposed to deal with the four aforementioned problems, by setting the model parameters, i.e. scaling factors and window size and smoothing factor of a guided image filter in the DCP scheme. Note that a dehazed image is generally dim and low in contrast. An adaptive gamma correction (AGC) is introduced for dehazed image enhancement. The proposed IDCP and AGC are used to create the IDCP/AGC scheme, in which the IDCP scheme performs haze removal and the AGC enhances the dehazed image. The IDCP/AGC scheme was justified through extensive experiments and compared with the DCP scheme, an optimization-based scheme, and two learning-based schemes on two datasets. The results indicated that the proposed scheme is subjectively and objectively superior to the comparison schemes.
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通过参数设置和自适应伽玛校正改进DCP去雾方案
近年来,由He等人提出的基于暗通道先验(dark channel prior, DCP)的单幅图像去雾技术在图像恢复界备受关注。这种去雾算法,在这里被称为DCP方案,众所周知,在去雾图像中有四个主要问题:伪影、色调失真、颜色过饱和度和光晕。本文提出了一种改进的DCP (IDCP)方案,通过设置DCP方案中引导图像滤波器的缩放因子、窗口大小和平滑因子等模型参数来解决上述四个问题。注意,去雾的图像通常是暗淡的,对比度低。引入了一种自适应伽玛校正(AGC)来增强去雾图像。利用所提出的IDCP和AGC建立IDCP/AGC方案,其中IDCP方案进行雾霾去除,AGC增强去雾后的图像。通过大量的实验验证了IDCP/AGC方案,并在两个数据集上与DCP方案、基于优化的方案和两种基于学习的方案进行了比较。结果表明,该方案主观上和客观上都优于比较方案。
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来源期刊
Advances in Systems Science and Applications
Advances in Systems Science and Applications Engineering-Engineering (all)
CiteScore
1.20
自引率
0.00%
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0
期刊介绍: Advances in Systems Science and Applications (ASSA) is an international peer-reviewed open-source online academic journal. Its scope covers all major aspects of systems (and processes) analysis, modeling, simulation, and control, ranging from theoretical and methodological developments to a large variety of application areas. Survey articles and innovative results are also welcome. ASSA is aimed at the audience of scientists, engineers and researchers working in the framework of these problems. ASSA should be a platform on which researchers will be able to communicate and discuss both their specialized issues and interdisciplinary problems of systems analysis and its applications in science and industry, including data science, artificial intelligence, material science, manufacturing, transportation, power and energy, ecology, corporate management, public governance, finance, and many others.
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