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A Split-Based Approach to Unsupervised Change Detection in Large-Size SAR Images

机译:大尺寸SAR图像中无监督变化检测的基于分割方法

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This paper presents a novel split-based approach to automatic and unsupervised detection of changes caused by tsunamis in large-size multitemporal SAR images. Unlike standard methods, the proposed approach can detect in a consistent and reliable way changes in images of large size also when the prior probability of the class of changed pixels is very small (and therefore the extension of the changed area is small). The method is based on: ⅰ) pre-processing of images and comparison; ⅱ) sea identification and masking; ⅲ) split-based analysis. The proposed system has been developed for properly identifying damages induced by tsunamis along coastal areas. Nevertheless presented approach is general and can be used (with small modifications) for damage assessment in different kinds of problems with different types of multitemporal remote sensing images. Experimental results obtained on multitemporal RADARSAT-1 SAR images of the Sumatra Island (Indonesia) confirm the effectiveness of the proposed split-based approach.
机译:本文介绍了一种基于分类的基于分割方法,可以自动和无监督检测在大型多型SAR图像中海啸引起的大海啸。与标准方法不同,所提出的方法可以以一致且可靠的方式检测大尺寸的图像的图像变化,当时的改变像素的类别非常小(并且因此改变区域的延伸很小)。该方法基于:Ⅰ)预处理图像和比较; Ⅱ)海洋鉴定和掩蔽; Ⅲ)基于分裂的分析。已经制定了拟议的系统,以适当地识别海啸沿着沿海地区诱导的损害。然而,呈现的方法是一般的,可以使用(对于小型修改)来造成不同类型的多模型遥感图像的不同类型问题的损伤评估。在苏门答腊岛(印度尼西亚)的多立体雷达拉特-1 SAR图像上获得的实验结果证实了所提出的基于分裂的方法的有效性。

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