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首页> 外文期刊>Expert Systems with Application >River channel segmentation in polarimetric SAR images: Watershed transform combined with average contrast maximisation
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River channel segmentation in polarimetric SAR images: Watershed transform combined with average contrast maximisation

机译:极化SAR图像中的河道分割:分水岭变换与平均对比度最大化相结合

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摘要

This publication presents a computer method allowing river channels to be segmented based on SAR polarimetric images. Solutions have been proposed which are based on a morphological approach using the watershed segmentation and combining regions by maximising the average contrast. The image processing methods were developed so that their computational complexity is as low as possible, which is of particular importance in analysing high resolution SAR/polarimetric SAR images, where it has a measurable impact on the total segmentation time. What is more, compared to the existing solutions known from the literature review: (1) in the proposed approach, there is no need to execute further steps necessary to eliminate objects (i.e. background components) located outside the river channel from the image as a result of the segmentation carried out, (2) there is no need to sample the entire image and carry out a pixel-wise classification to prepare the segmentation process. If the steps listed in items (1) - (2) are performed, they can, unfortunately, extend the segmentation time. The experiments completed on images acquired from the ALOS PALSAR satellite for different regions of the world have shown a high quality of the segmentations carried out and a high computational efficiency compared to state-of-the art methods. Consequently, the proposed method can be used as a useful tool for monitoring changes in river courses and adopted in expert and intelligent systems used for analysing remote sensing data. (C) 2017 Elsevier Ltd. All rights reserved.
机译:该出版物提出了一种计算机方法,该方法允许根据SAR极化图像对河道进行分割。已经提出了基于形态学方法的解决方案,该解决方案使用分水岭分割并通过使平均对比度最大化来组合区域。图像处理方法的发展使得它们的计算复杂度尽可能低,这在分析高分辨率SAR /极化SAR图像时特别重要,因为它对总分割时间有可测量的影响。而且,与文献综述中已知的现有解决方案相比:(1)在所提出的方法中,无需执行其他步骤就可以从图像中消除位于河道外部的物体(即背景成分)。进行分割的结果,(2)无需对整个图像进行采样并进行像素分类以准备分割过程。如果执行了第(1)-(2)项中列出的步骤,不幸的是,它们可以延长分割时间。从世界各地不同地区的ALOS PALSAR卫星获取的图像上完成的实验表明,与最新方法相比,该方法可以进行高质量的分割,并具有很高的计算效率。因此,该方法可作为监测河道变化的有用工具,并被用于分析遥感数据的专家和智能系统中。 (C)2017 Elsevier Ltd.保留所有权利。

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