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A random forest based method for urban object classification using lidar data and aerial imagery

机译:基于激光森林和航空影像的基于随机森林的城市物体分类方法

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Urban land cover classification has always been crucial due to its ability to link many elements of human and physical environments. In this paper, random forest is explored for urban areas. Lidar data and aerial imagery with 0.5-m resolution were used to classify four land categories in the study area located in the City of Niagara Falls (ON, Canada). Based on the experiment results, RF based classification is suited for reducing the data dimensionality of complex urban land cover types in the study area meanwhile reserving discrimination of different classes.
机译:由于城市土地覆盖分类具有将人类和自然环境的许多要素联系起来的能力,因此一直至关重要。在本文中,针对城市地区探索了随机森林。使用激光雷达数据和分辨率为0.5 m的航空影像对位于尼亚加拉瀑布城(加拿大安大略省)的研究区域中的四个土地类别进行分类。基于实验结果,基于RF的分类适合降低研究区域内复杂城市土地覆盖类型的数据维数,同时保留对不同类别的区分。

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