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A review on Stochastic Matched Filter based denoising methods for SAS images despeckling

机译:基于随机匹配滤波器的SAS图像去斑方法研究进展

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Detection and classification of underwater mines with Synthetic Aperture Sonar (SAS) images is a challenge that can be performed in studying either the echoes or the shadows of mines. But, as any images obtained with a coherent system, SAS images are highly corrupted by the speckle noise, which reduces spatial and radiometric resolutions. So such a noise can be very disturbing for the interpretation and the automatic analysis of SAS images. To reduce the speckle level, filtering methods are generally used but all of them strongly deteriorate either the shadow or the echo of the mine. The purpose of this article is to compare several Stochastic Matched Filter based denoising methods, in order to determine which of them is the most appropriate to enhance both echoes and shadow mines. Results obtained on real SAS data are presented and discussed.
机译:利用合成孔径声纳(SAS)图像对水下地雷进行检测和分类是一项挑战,可在研究地雷的回波或阴影时进行。但是,与使用相干系统获得的任何图像一样,SAS图像会受到斑点噪声的严重破坏,从而降低了空间分辨率和辐射分辨率。因此,这种噪声可能会严重干扰SAS图像的解释和自动分析。为了降低斑点水平,通常使用滤波方法,但是所有这些方法都会严重破坏矿井的阴影或回波。本文的目的是比较几种基于随机匹配滤波器的降噪方法,以确定哪种方法最适合同时增强回波和阴影雷。介绍并讨论了在真实SAS数据上获得的结果。

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    《》|2007年|1-6|共6页
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    Courmontagne; Philippe;

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