Sea-Thru: A Method for Removing Water From Underwater Images

D. Akkaynak, T. Treibitz
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引用次数: 44

Abstract

Robust recovery of lost colors in underwater images remains a challenging problem. We recently showed that this was partly due to the prevalent use of an atmospheric image formation model for underwater images. We proposed a physically accurate model that explicitly showed: 1)~the attenuation coefficient of the signal is not uniform across the scene but depends on object range and reflectance, 2)~the coefficient governing the increase in backscatter with distance differs from the signal attenuation coefficient. Here, we present a method that recovers color with the revised model using RGBD images. The \emph{Sea-thru} method first calculates backscatter using the darkest pixels in the image and their known range information. Then, it uses an estimate of the spatially varying illuminant to obtain the range-dependent attenuation coefficient. Using more than 1,100 images from two optically different water bodies, which we make available, we show that our method outperforms those using the atmospheric model. Consistent removal of water will open up large underwater datasets to powerful computer vision and machine learning algorithms, creating exciting opportunities for the future of underwater exploration and conservation.
Sea-Thru:一种从水下图像中去除水的方法
水下图像的彩色恢复仍然是一个具有挑战性的问题。我们最近表明,这部分是由于水下图像普遍使用大气图像形成模型。我们提出了一个精确的物理模型,该模型明确地表明:1)信号的衰减系数在整个场景中不是均匀的,而是取决于物体的距离和反射率;2)控制后向散射随距离增加的系数与信号衰减系数不同。在这里,我们提出了一种使用RGBD图像使用修正模型恢复颜色的方法。\emph{Sea-thru}方法首先使用图像中最暗的像素及其已知的距离信息计算后向散射。然后,利用对空间变化光源的估计,得到与距离相关的衰减系数。使用我们提供的来自两个光学不同的水体的1100多张图像,我们表明我们的方法优于使用大气模型的方法。持续去除水将为强大的计算机视觉和机器学习算法打开大型水下数据集,为未来的水下勘探和保护创造令人兴奋的机会。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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