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An Underwater Turbulence Degraded Image Restoration Algorithm

机译:水下湍流退化图像复原算法

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摘要

Underwater turbulence occurs due to random fluctuations of temperature and salinity in the water. These fluctuations are responsible for variations in water density, refractive index and attenuation. These impose random geometric distortions, spatio-temporal varying blur, limited range visibility and limited contrast on the acquired images. There are some restoration techniques developed to address this problem, such as image registration based, lucky region based and centroid-based image restoration algorithms. Although these methods demonstrate better results in terms of removing turbulence, they require computationally intensive image registration, higher CPU load and memory allocations. Thus, in this paper, a simple patch based dictionary learning algorithm is proposed to restore the image by alleviating the costly image registration step. Dictionary learning is a machine learning technique which builds a dictionary of non-zero atoms derived from the sparse representation of an image or signal. The image is divided into several patches and the sharp patches are detected from them. Next, dictionary learning is performed on these patches to estimate the restored image. Finally, an image deconvolution algorithm is employed on the estimated restored image to remove noise that still exists.
机译:水下湍流是由于水中温度和盐度的随机波动而发生的。这些波动是水密度,折射率和衰减变化的原因。这些在采集的图像上施加了随机的几何失真,时空变化的模糊,有限的范围可见性和有限的对比度。已经开发出一些解决此问题的恢复技术,例如基于图像配准,基于幸运区域和基于质心的图像恢复算法。尽管这些方法在消除湍流方面显示出更好的结果,但是它们需要计算量大的图像配准,更高的CPU负载和内存分配。因此,本文提出了一种基于补丁的简单字典学习算法,通过减轻代价高昂的图像配准步骤来恢复图像。字典学习是一种机器学习技术,可构建从图像或信号的稀疏表示中得出的非零原子字典。图像分为几个色块,并从中检测出清晰的色块。接下来,对这些补丁执行字典学习以估计恢复的图像。最后,在估计的还原图像上采用图像反卷积算法以去除仍然存在的噪声。

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