School of Computer, Central China Normal University, Wuhan, Hubei, China.
Hubei Provincial Key Laboratory of Artificial Intelligence and Smart Learning, Central China Normal University, Wuhan, Hubei, China.
PLoS One. 2024 Feb 26;19(2):e0299110. doi: 10.1371/journal.pone.0299110. eCollection 2024.
Underwater images are often scattered due to suspended particles in the water, resulting in light scattering and blocking and reduced visibility and contrast. Color shifts and distortions are also caused by the absorption of different wavelengths of light in the water. This series of problems will make the underwater image quality greatly impaired, resulting in some advanced visual work can not be carried out underwater. In order to solve these problems, this paper proposes an underwater image enhancement method based on multi-task fusion, called MTF. Specifically, we first use linear constraints on the input image to achieve color correction based on the gray world assumption. The corrected image is then used to achieve visibility enhancement using an improved type-II fuzzy set-based algorithm, while the image is contrast enhanced using standard normal distribution probability density function and softplus function. However, in order to obtain more qualitative results, we propose multi-task fusion, in which we solve for similarity, then we obtain fusion weights that guarantee the best features of the image as much as possible from the obtained similarity, and finally we fuse the image with the weights to obtain the output image, and we find that multi-task fusion has excellent image enhancement and restoration capabilities, and also produces visually pleasing results. Extensive qualitative and quantitative evaluations show that MTF method achieves optimal results compared to ten state-of-the-art underwater enhancement algorithms on 2 datasets. Moreover, the method can achieve better results in application tests such as target detection and edge detection.
水下图像通常会因水中悬浮颗粒而分散,导致光散射和阻挡,从而降低能见度和对比度。水对不同波长光的吸收也会导致颜色偏移和失真。这一系列问题会使水下图像质量大大受损,导致一些高级视觉工作无法在水下进行。为了解决这些问题,本文提出了一种基于多任务融合的水下图像增强方法,称为 MTF。具体来说,我们首先使用输入图像的线性约束来实现基于灰度世界假设的颜色校正。然后,使用改进的基于 II 型模糊集的算法对校正后的图像进行可见度增强,同时使用标准正态分布概率密度函数和 softplus 函数对图像进行对比度增强。然而,为了获得更好的定性结果,我们提出了多任务融合,在其中我们求解相似度,然后我们从获得的相似度中获得融合权重,以尽可能保证图像的最佳特征,最后我们使用权重融合图像以获得输出图像,我们发现多任务融合具有出色的图像增强和恢复能力,并且还产生了令人愉悦的视觉效果。广泛的定性和定量评估表明,与 2 个数据集上的十种最先进的水下增强算法相比,MTF 方法取得了最佳的结果。此外,该方法在目标检测和边缘检测等应用测试中可以取得更好的效果。