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首页> 外文期刊>Oceanic Engineering, IEEE Journal of >Coastline Detection in Synthetic Aperture Radar (SAR) Images by Integrating Watershed Transformation and Controllable Gradient Vector Flow (GVF) Snake Model
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Coastline Detection in Synthetic Aperture Radar (SAR) Images by Integrating Watershed Transformation and Controllable Gradient Vector Flow (GVF) Snake Model

机译:集水域变换和可控梯度矢量流(GVF)蛇模型相结合的合成孔径雷达(SAR)图像中的海岸线检测

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摘要

Detection of coastline in synthetic aperture radars (SARs) is difficult due to the presence of speckle effect and strong signal return from wind-roughened, wave-modulated sea. This paper presents a new approach to detect coastlines from SAR images by integrating watershed transformation and gradient vector flow (GVF) snake model. Several improvements have been made to improve the accuracy and efficiency of coastline detection. First, ratio of averages edge detector is used to produce gradient maps suitable for watershed transformation. Second, an improved GVF snake model is presented, which exploits two external constraint forces to make the curve evolution more controllable. We name it controllable GVF (CGVF) snake model. Third, a coarse-fine processing scheme is employed, in which watershed transformation is performed on a coarse-resolution image to obtain the initial contours for CGVF snake model, and then CGVF snake model is used to refine the roughly detected coastline at fine resolution. Experimental results on Envisat-ASAR and TerraSAR-X images show that with only a modest computational burden, the new approach produces a good match between the detected coastline and the true one.
机译:由于存在斑点效应和来自风浪波调制海的强信号返回,很难在合成孔径雷达(SAR)中检测海岸线。本文提出了一种新的方法,通过结合分水岭变换和梯度矢量流(GVF)蛇模型从SAR图像中检测海岸线。为了提高海岸线检测的准确性和效率,已经进行了一些改进。首先,平均比率边缘检测器用于生成适合分水岭变换的梯度图。其次,提出了一种改进的GVF蛇模型,该模型利用两个外部约束力使曲线演化更加可控。我们将其命名为可控制的GVF(CGVF)蛇模型。第三,采用粗细处理方案,对粗分辨率图像进行分水岭变换,得到CGVF蛇形模型的初始轮廓,然后使用CGVF蛇形模型以精细分辨率细化粗略检测到的海岸线。在Envisat-ASAR和TerraSAR-X图像上的实验结果表明,这种新方法只需要适度的计算负担,就能在检测到的海岸线和真实海岸线之间产生良好的匹配。

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