首页> 外文会议>ISPRS Conference on "Serving Society with Geoinformatics" >INVESTIGATION ON AUTOMATIC CHANGE DETECTION USING PIXEL-CHANGES AND DSM-CHANGES WITH ALOS-PRISM TRIPLET IMAGES
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INVESTIGATION ON AUTOMATIC CHANGE DETECTION USING PIXEL-CHANGES AND DSM-CHANGES WITH ALOS-PRISM TRIPLET IMAGES

机译:使用像素变化和DSM变化与Alos-Prism Triplet图像的自动变更检测调查

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A new algorithm for automatic change detection is presented. It detects a pixel-change and DSM-change from two orthoimages and two DSMs, then it extracts the polygons in elevation-changed areas. Pixel-change is detected by using least squares fitting technique. This method can extract the visible changed areas between two orthoimages, while DSM-change is detected by difference DSM. From these two changes, polygons in elevation-changed areas are extracted using the longest matched line selection techniques. This method can automatically detect not only visible changed areas such as vegetated areas, new road construction areas and so on, but also elevation-changed areas such as new building construction, land improvement areas and so on with footprint polygon extraction. We have tested our method using the two sets of ALOS-PRISM triplet images observed over a testfield in Tsukuba, Japan. We confirmed that this method has an effect finding changed areas. Also we compared the number of extracted polygons between manual operation and our automatic method.
机译:提出了一种新的自动变化检测算法。它检测来自两个OrthoImages和两个DSM的像素变化和DSM-Change,然后它提取了改变区域中的多边形。通过使用最小二乘拟合技术来检测像素变化。该方法可以在两个正弦图像之间提取可见的变化区域,而DSM-Change被差异DSM检测到。从这两个变化,使用最长匹配的线路选择技术提取高程改变区域中的多边形。这种方法不仅可以自动检测可见的变化区域,如植被领域,新的道路建设区域等,还可以提升更改的区域,如新建筑结构,土地改善区域等占地面积占地面积。我们已经使用了日本Tsukuba的测试域观察到了两套Alos-Prism三联网图像的方法。我们确认该方法具有发现改变区域的效果。我们还比较了手动操作和自动方法之间提取的多边形数量。

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