首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >EFFECT OF DIFFERENT SEGMENTATION METHODS USING OPTICAL SATELLITE IMAGERY TO ESTIMATE FUZZY CLUSTERING PARAMETERS FOR SENTINEL-1A SAR IMAGES
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EFFECT OF DIFFERENT SEGMENTATION METHODS USING OPTICAL SATELLITE IMAGERY TO ESTIMATE FUZZY CLUSTERING PARAMETERS FOR SENTINEL-1A SAR IMAGES

机译:光学卫星影像不同分割方法对SENTINEL-1A SAR图像的模糊聚类参数的估计

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Optical and SAR data are efficient data sources for shoreline monitoring. The processing of SAR data such as feature extraction is not an easy task since the images have totally different structure than optical imagery. Determination of threshold value is a challenging task for SAR data. In this study, SENTINEL-2A optical data was used as ancillary data to predict fuzzy membership parameters for segmentation of SENTINEL-1A SAR data to extract shoreline. SENTINEL-2A and SENTINEL-1A satellite images used were taken in September 9, 2016 and September 13, 2016 respectively. Three different segmentation algorithms which are selected from object, learning and pixel-based methods. They have been exploited to obtain land and water classes which have been used as an input data for parameter estimation. Thus, the performance of different segmentation algorithm has been investigated and analysed. In the first step of the study, Mean-Shift, Random Forest and Whale Optimization algorithms have been employed to obtain water and land classes from the SENTINEL-2A image. Water and land classes derived from each algorithm – are used as input data, and then the required parameters for the fuzzy clustering of SENTINEL-1A SAR image, were calculated. Lake Constance, Germany has been chosen as the study area. In this study, additionally an interface plugin has been developed and integrated into the open source Quantum GIS software platform. The developed interface allows non-experts to process and extract the shorelines without using any parameters. But, this system requires pre-segmented data as input. Thus, the batch process calculates the required parameters.
机译:光学和SAR数据是用于海岸线监测的有效数据源。 SAR数据的处理(例如特征提取)并非易事,因为图像的结构与光学图像完全不同。对于SAR数据,确定阈值是一项艰巨的任务。在这项研究中,SENTINEL-2A光学数据用作辅助数据来预测模糊隶属度参数,以分割SENTINEL-1A SAR数据以提取海岸线。使用的SENTINEL-2A和SENTINEL-1A卫星图像分别于2016年9月9日和2016年9月13日拍摄。从对象,学习和基于像素的方法中选择三种不同的分割算法。他们已经被利用来获得土地和水的类别,它们被用作参数估计的输入数据。因此,已经研究和分析了不同分割算法的性能。在研究的第一步中,均值漂移,随机森林和鲸鱼优化算法已用于从SENTINEL-2A图像中获得水和土地类别。将从每种算法得出的水和土地类别用作输入数据,然后计算SENTINEL-1A SAR图像的模糊聚类所需的参数。德国博登湖已被选为研究区域。在这项研究中,还开发了一个接口插件,并将其集成到开源Quantum GIS软件平台中。开发的界面允许非专家在不使用任何参数的情况下处理和提取海岸线。但是,该系统需要预先分段的数据作为输入。因此,批处理过程将计算所需的参数。

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