4.6 Article

Image Dehazing in Disproportionate Haze Distributions

Journal

IEEE ACCESS
Volume 9, Issue -, Pages 44599-44609

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2021.3065968

Keywords

Image restoration; Atmospheric modeling; Image color analysis; Estimation; Licenses; Covariance matrices; Channel estimation; Haze removal; disproportionate haze distribution; dark channel prior

Funding

  1. National Taipei University of Technology [NTUT-KMITL-106-03]
  2. Shanghai 2018 Innovation Action Plan Project [18510760200]

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In this study, a novel haze removal method targeting images with disproportionate haze distribution is proposed, demonstrating higher efficacy compared to other state-of-the-art methods in restoring test images captured in real-world environments.
Haze removal techniques employed to increase the visibility level of an image play an important role in many vision-based systems. Several traditional dark channel prior-based methods have been proposed to remove haze formation and thereby enhance the robustness of these systems. However, when the captured images contain disproportionate haze distributions, these methods usually fail to attain effective restoration in the restored image. Specifically, disproportionate haze distribution in an image means that the background region possesses heavy haze density and the foreground region possesses little haze density. This phenomenon usually occurs in a hazy image with a deep depth of field. In response, a novel hybrid transmission map-based haze removal method that specifically targets this situation is proposed in this work to achieve clear visibility restoration and effective information maintenance. Experimental results via both qualitative and quantitative evaluations demonstrate that the proposed method is capable of performing with higher efficacy when compared with other state-of-the-art methods, in respect to both background regions and foreground regions of restored test images captured in real-world environments.

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