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Using the CLEAN algorithm to restore undersampled synthetic aperture sonar images

机译:使用CLEAN算法还原欠采样的合成孔径声纳图像

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We present an implementation of the CLEAN algorithm for synthetic aperture sonar. The algorithm is designed to restore image degradation due to gaps in data. We have studied its performance on a variety of scenes based on both simulated and real sonar data. When the scene is composed of point-like targets, the algorithm performs very well, rapidly retrieving the true image that would be derived from fully sampled data. This success can be achieved in spite of a substantial 50% undersampling fraction, corresponding to a platform tow-speed twice as fast as the synthetic aperture limit. However, when the scene is composed of extended bright regions, the algorithm tends to either converge extremely slowly, or fail entirely. Quantitative measures of the rate and degree of restoration are discussed, as well as images before and after the CLEAN process. If the data gaps are caused by towing a sonar platform at a speed in excess of the natural synthetic aperture limit, the successful repair of images derived from undersampled data permits an acceleration in the rate at which the seafloor may be surveyed for mines.
机译:我们提出了一种用于合成孔径声纳的CLEAN算法的实现。该算法旨在恢复由于数据缺口而导致的图像降级。我们已经基于模拟和真实声纳数据研究了其在各种场景下的性能。当场景由点状目标组成时,该算法的性能非常好,可以快速检索从完全采样的数据中得出的真实图像。尽管有50%的欠采样率,相当于平台拖曳速度是合成孔径极限的两倍,但仍可以实现这一成功。但是,当场景由扩展的明亮区域组成时,该算法趋于要么收敛极慢,要么完全失效。讨论了恢复速度和程度的定量方法,以及CLEAN过程之前和之后的图像。如果数据间隙是由于以超过自然合成孔径极限的速度牵引声纳平台引起的,则对欠采样数据得出的图像进行成功的修复就可以加快对海底进行地雷勘测的速度。

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