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An Efficient Underwater Image Enhancement Model With Extensive Beer-Lambert Law

机译:具有广泛比尔-朗伯定律的有效水下图像增强模型

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We develop a simple yet effective model for enhancing single underwater image by mathematically extending the Beer-Lambert law. In the proposed model, we take advantage of the mean and variance of natural images to be the reference to correct color casts of underwater images. We propose an efficient strategy to recover better details of underwater images, which involves two steps: in the first step we establish a linear model associated with the mean and variance of underwater images to locate images regions containing more details, and in the second step we present a nonlinear adaptive weight scheme using this locating information to recover better details and prevent partial over-enhancement. Ultimate experiments are performed to demonstrate the effectiveness of the proposed method, and these experimental results show that our method yields better structural restoration, more naturalness color correction, and less time consumption.s
机译:我们通过数学扩展比尔-朗伯定律,开发了一种简单有效的模型来增强单个水下图像。在提出的模型中,我们利用自然图像的均值和方差作为校正水下图像色偏的参考。我们提出了一种有效的策略来恢复水下图像的更好细节,这涉及两个步骤:第一步,建立与水下图像的均值和方差相关联的线性模型,以定位包含更多细节的图像区域;第二步,提出了一种非线性自适应权重方案,利用该定位信息来恢复更好的细节并防止局部过度增强。进行了最终实验以证明该方法的有效性,这些实验结果表明,我们的方法可产生更好的结构还原,更自然的色彩校正和更少的时间消耗。

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