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Objectively assessing underwater image quality for the purpose of automated restoration

机译:客观地评估水下图像质量,以实现自动恢复

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In order to automatically enhance and restore images, especially those taken from underwater environments where scattering and absorption by the medium strongly influence the imaging results even within short distances, it is critical to have access to an objective measure of the quality of images obtained. This contribution presents an approach to measure the sharpness of an image based on the weighted gray-scale-angle (GSA) of detected edges. Images are first decomposed by a wavelet transform to remove random and part medium noises, to augment chances of true edge detection. Sharpness of each edge is then determined by regression to determine the slope between gray-scale values of edge pixels versus locations, which is the tangent of an angle based on grayscale. The overall sharpness of the image is the average of each measured GSAs, weighted by the ratio of the power of the first level decomposition details, to the total power of the image. Adaptive determination of edge widths is facilitated by values associated with image noise variances. To further remove the noise contamination, edge widths less than corresponding noise variances or regression requirement are discarded. Without losing generality while easily expandable, only horizontal edge widths are used in this study. Standard test images as well as those taken from field are used to be compared subjectively. Initial restoration results from field measured underwater images based on this approach and weakness of the metric are also presented and discussed.
机译:为了自动增强和恢复图像,特别是那些从水下环境中取出的那些,其中介质的散射和吸收强烈地影响成像结果,即使在短距离内,可以访问获得的图像质量的客观度量是至关重要的。该贡献呈现了一种方法来测量基于检测到的边缘的加权灰度角(GSA)的图像的锐度。通过小波变换首先分解图像以移除随机和部分介质噪声,以增加真正的边缘检测的机会。然后通过回归确定每个边缘的锐度,以确定边缘像素与位置的灰度值之间的斜率,这是基于灰度的角度的切线。图像的整体清晰度是每个测量的GSA的平均值,由第一电平分解细节的功率的比率加权,到图像的总功率。通过与图像噪声差异相关的值促进边缘宽度的自适应确定。为了进一步删除噪声污染,丢弃了比相应噪声差异或回归要求小的边缘宽度。在不损失的情况下轻松扩张,在本研究中仅使用水平边缘宽度。标准测试图像以及从字段中获取的那些就可以主观比较。还提出并讨论了基于该方法的场测量的水下图像的初始恢复结果,并讨论了测量的弱点。

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