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Individual Building Rooftop and Tree Crown Segmentation from High-Resolution Urban Aerial Optical Images

机译:高分辨率城市空中光学图像的个人建筑屋顶和树冠分割

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摘要

We segment buildings and trees from aerial photographs by using superpixels, and we estimate the tree’s parameters by using a cost function proposed in this paper. A method based on image complexity is proposed to refine superpixels boundaries. In order to classify buildings from ground and classify trees from grass, the salient feature vectors that include colors, Features from Accelerated Segment Test (FAST) corners, and Gabor edges are extracted from refined superpixels. The vectors are used to train the classifier based on Naive Bayes classifier. The trained classifier is used to classify refined superpixels as object or nonobject. The properties of a tree, including its locations and radius, are estimated by minimizing the cost function. The shadow is used to calculate the tree height using sun angle and the time when the image was taken. Our segmentation algorithm is compared with other two state-of-the-art segmentation algorithms, and the tree parameters obtained in this paper are compared to the ground truth data. Experiments show that the proposed method can segment trees and buildings appropriately, yielding higher precision and better recall rates, and the tree parameters are in good agreement with the ground truth data.
机译:我们通过使用Superpixels将建筑物和树木分段,我们通过使用本文提出的成本函数来估计树的参数。提出了一种基于图像复杂度的方法来改进超像性边界。为了将建筑物从地面分类并从草地上分类树木,包括颜色,来自加速段测试(快)角的颜色的突出特征向量,以及从精制的超像素中提取了Gabor边缘。该矢量用于基于Naive Bayes分类器训练分类器。训练有素的分类器用于将精细的SuperPixels分类为对象或非object。通过最小化成本函数来估计树的属性,包括其位置和半径。影子用于使用太阳角度和拍摄图像的时间来计算树高。将我们的分割算法与其他两个最先进的分割算法进行比较,并且将本文获得的树参数与地面真理数据进行比较。实验表明,该方法可以适当地进行树木和建筑物,产生更高的精度和更好的召回率,树参数与地面真理数据吻合良好。

著录项

  • 作者

    Jichao Jiao; Zhongliang Deng;

  • 作者单位
  • 年度 2016
  • 总页数
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类

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