{"title":"Comparison of GAN Deep Learning Methods for Underwater Optical Image Enhancement","authors":"Hong-Gi Kim, Jung-min Seo, S. Kim","doi":"10.26748/ksoe.2021.095","DOIUrl":null,"url":null,"abstract":"Underwater optical images face various limitations that degrade the image quality compared with optical images taken in our atmosphere. Attenuation according to the wavelength of light and reflection by very small floating objects cause low contrast, blurry clarity, and color degradation in underwater images. We constructed an image data of the Korean sea and enhanced it by learning the characteristics of underwater images using the deep learning techniques of CycleGAN (cycle-consistent adversarial network), UGAN (underwater GAN), FUnIE-GAN (fast underwater image enhancement GAN). In addition, the underwater optical image was enhanced using the image processing technique of Image Fusion. For a quantitative performance comparison, UIQM (underwater image quality measure), which evaluates the performance of the enhancement in terms of colorfulness, sharpness, and contrast, and UCIQE (underwater color image quality evaluation), which evaluates the performance in terms of chroma, luminance, and saturation were calculated. For 100 underwater images taken in Korean seas, the average UIQMs of CycleGAN, UGAN, and FUnIE-GAN were 3.91, 3.42, and 2.66, respectively, and the average UCIQEs were measured to be 29.9, 26.77, and 22.88, respectively. The average UIQM and UCIQE of Image Fusion were 3.63 and 23.59, respectively. CycleGAN and UGAN qualitatively and quantitatively improved the image quality in various underwater environments, and FUnIE-GAN had performance differences depending on the underwater environment. Image Fusion showed good performance in terms of color correction and sharpness enhancement. It is expected that this method can be used for monitoring underwater works and the autonomous operation of unmanned vehicles by improving the visibility of underwater situations more accurately. Received 6 December 2021, revised 21 December 2021, accepted 30 December 2021 Corresponding author Soo Mee Kim: +82-51-664-3041, smeekim@kiost.ac.kr c 2022, The Korean Society of Ocean Engineers This is an open access article distributed under the terms of the creative commons attribution non-commercial license (http://creativecommons.org/licenses/by-nc/4.0) which permits unrestricted non-commercial use, distribution, and reproduction in any medium, provided the original work is properly cited.","PeriodicalId":315103,"journal":{"name":"Journal of Ocean Engineering and Technology","volume":"19 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2022-02-04","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"6","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Journal of Ocean Engineering and Technology","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.26748/ksoe.2021.095","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 6
Abstract
Underwater optical images face various limitations that degrade the image quality compared with optical images taken in our atmosphere. Attenuation according to the wavelength of light and reflection by very small floating objects cause low contrast, blurry clarity, and color degradation in underwater images. We constructed an image data of the Korean sea and enhanced it by learning the characteristics of underwater images using the deep learning techniques of CycleGAN (cycle-consistent adversarial network), UGAN (underwater GAN), FUnIE-GAN (fast underwater image enhancement GAN). In addition, the underwater optical image was enhanced using the image processing technique of Image Fusion. For a quantitative performance comparison, UIQM (underwater image quality measure), which evaluates the performance of the enhancement in terms of colorfulness, sharpness, and contrast, and UCIQE (underwater color image quality evaluation), which evaluates the performance in terms of chroma, luminance, and saturation were calculated. For 100 underwater images taken in Korean seas, the average UIQMs of CycleGAN, UGAN, and FUnIE-GAN were 3.91, 3.42, and 2.66, respectively, and the average UCIQEs were measured to be 29.9, 26.77, and 22.88, respectively. The average UIQM and UCIQE of Image Fusion were 3.63 and 23.59, respectively. CycleGAN and UGAN qualitatively and quantitatively improved the image quality in various underwater environments, and FUnIE-GAN had performance differences depending on the underwater environment. Image Fusion showed good performance in terms of color correction and sharpness enhancement. It is expected that this method can be used for monitoring underwater works and the autonomous operation of unmanned vehicles by improving the visibility of underwater situations more accurately. Received 6 December 2021, revised 21 December 2021, accepted 30 December 2021 Corresponding author Soo Mee Kim: +82-51-664-3041, smeekim@kiost.ac.kr c 2022, The Korean Society of Ocean Engineers This is an open access article distributed under the terms of the creative commons attribution non-commercial license (http://creativecommons.org/licenses/by-nc/4.0) which permits unrestricted non-commercial use, distribution, and reproduction in any medium, provided the original work is properly cited.
与在大气中拍摄的光学图像相比,水下光学图像面临着各种降低图像质量的限制。根据光的波长和非常小的漂浮物反射的衰减导致水下图像对比度低,清晰度模糊和颜色退化。我们构建了一个朝鲜海的图像数据,并通过使用循环一致对抗网络(CycleGAN)、UGAN(水下GAN)、FUnIE-GAN(快速水下图像增强GAN)的深度学习技术学习水下图像的特征来增强它。此外,利用图像融合的图像处理技术对水下光学图像进行增强。为了进行定量性能比较,我们计算了从色彩、清晰度和对比度方面评价增强性能的UIQM(水下图像质量度量)和从色度、亮度和饱和度方面评价增强性能的UCIQE(水下彩色图像质量评价)。在韩国海域拍摄的100张水下照片中,CycleGAN、UGAN、FUnIE-GAN的平均UIQMs分别为3.91、3.42、2.66,平均ucqes分别为29.9、26.77、22.88。图像融合的平均UIQM和UCIQE分别为3.63和23.59。CycleGAN和UGAN定性和定量地提高了各种水下环境下的图像质量,FUnIE-GAN根据水下环境的不同存在性能差异。图像融合在色彩校正和锐度增强方面表现出良好的性能。期望该方法可以通过更准确地提高水下情况的可视性,用于水下工程的监控和无人驾驶车辆的自主操作。通讯作者Soo Mee Kim: +82-51-664-3041, smeekim@kiost.ac.kr c 2022, The Korean Society of Ocean Engineers这是一篇开放获取的文章,根据创作共用归属非商业许可(http://creativecommons.org/licenses/by-nc/4.0)的条款分发,该许可允许不受限制的非商业使用,分发和在任何媒介上复制,只要原始作品被适当引用。