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Coastline Detection with Time Series of SAR Images

机译:SAR图像时间序列的海岸线检测

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For maritime remote sensing, coastline detection is a vital task. With continuous coastline detection results from satellite image time series, the actual shoreline, the sea level, and environmental parameters can be observed to support coastal management and disaster warning. Established coastline detection methods are often based on SAR images and well-known image processing approaches. These methods involve a lot of complicated data processing, which is a big challenge for remote sensing time series. Additionally, a number of SAR satellites operating with polarimetric capabilities have been launched in recent years, and many investigations of target characteristics in radar polarization have been performed. In this paper, a fast and efficient coastline detection method is proposed which comprises three steps. First, we calculate a modified correlation coefficient of two SAR images of different polarization. This coefficient differs from the traditional computation where normalization is needed. Through this modified approach, the separation between sea and land becomes more prominent. Second, we set a histogram-based threshold to distinguish between sea and land within the given image. The histogram is derived from the statistical distribution of the polarized SAR image pixel amplitudes. Third, we extract continuous coastlines using a Canny image edge detector that is rather immune to speckle noise. Finally, the individual coastlines derived from time series of .SAR images can be checked for changes.
机译:对于海洋遥感而言,海岸线检测是一项至关重要的任务。利用卫星图像时间序列的连续海岸线检测结果,可以观察实际海岸线,海平面和环境参数,以支持海岸管理和灾害预警。既定的海岸线检测方法通常基于SAR图像和众所周知的图像处理方法。这些方法涉及许多复杂的数据处理,这对于遥感时间序列是一个很大的挑战。另外,近年来已经发射了许多具有极化能力的SAR卫星,并且已经对雷达极化的目标特性进行了许多研究。本文提出了一种快速有效的海岸线检测方法,该方法包括三个步骤。首先,我们计算了两个极化不同的SAR图像的修正相关系数。该系数不同于需要归一化的传统计算。通过这种改进的方法,海陆分离变得更加突出。其次,我们设置基于直方图的阈值以区分给定图像内的海洋和陆地。直方图是从极化SAR图像像素幅度的统计分布中得出的。第三,我们使用对斑点噪声具有免疫力的Canny图像边缘检测器提取连续的海岸线。最后,可以检查从.SAR图像的时间序列得出的各个海岸线的变化。

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