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Semi-automatic extraction of large and moderate buildings from very high-resolution satellite imagery using active contour model

机译:使用主动轮廓模型从超高分辨率卫星图像中半自动提取大型和中型建筑物

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The traditional pixel-based classification totally relies on spectral information and neglects the spatial information. These methods when applied on very high-resolution imagery get confused because of the increased variability implicit within the data and thus leads to lower classification accuracies. The object-based image analysis (OBIA) is advantageous to deal with objects that are composed of homogeneous pixels. This paper aims at automatically extracting buildings from very high-resolution satellite imagery using Object Based Image Analysis(OBIA). The algorithm uses an active contour model called chan-vese segmentation to create objects from the image. Objects representing vegetation or trees are removed by subtracting NDVI mask from the segmented output. The detected objects are further filtered based on regional properties like minimum area, width of object etc. The results are promising with 74-77% of the buildings getting detected as objects.
机译:传统的基于像素的分类完全依赖光谱信息,而忽略了空间信息。这些方法在非常高分辨率的图像上应用时,由于数据中隐含的可变性增加而感到困惑,从而导致较低的分类精度。基于对象的图像分析(OBIA)有利于处理由均质像素组成的对象。本文旨在使用基于对象的图像分析(OBIA)从超高分辨率的卫星图像中自动提取建筑物。该算法使用称为“轮廓分割”的主动轮廓模型从图像创建对象。通过从分段输出中减去NDVI遮罩,可以删除代表植被或树木的对象。根据最小面积,对象宽度等区域属性对检测到的对象进行进一步过滤。结果是有希望的,有74-77%的建筑物被检测为对象。

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