首页> 外文期刊>Journal of Applied Remote Sensing >Accurate detection of tree apexes in coniferous canopies from airborne scanning light detection and ranging images based on crown-extraction filtering
【24h】

Accurate detection of tree apexes in coniferous canopies from airborne scanning light detection and ranging images based on crown-extraction filtering

机译:从机载扫描光检测和基于树冠提取滤波的测距图像中准确检测针叶树冠的树尖

获取原文
获取原文并翻译 | 示例
           

摘要

We describe crown-extraction (CE) filtering to accurately determine tree apex positions for various coniferous species using an airborne light detection and ranging-derived digital canopy height model (DCHM). This method uses a square mask, with a frame at the edges, that overlaps pixels within the DCHM image; when no pixels touch the frame, the pixel at the center is extracted as a tree-crown pixel. The apex of each tree is determined by choosing the pixel with maximum height from the pixels in the crown. We compared the performance of this method and of two other methods (local-maximum filtering and canopy-segmentation method) for several species. The CE filtering had the most accurate results for most tree species with appropriate mask size selection. The mean omission, commission, and total errors for all tree species were 8.1%, 1.6%, and 9.7%, respectively, for CE filtering. Comparing mask sizes and canopy diameters estimated from the DCHM for each species revealed that the smallest canopy diameter of each species was close to the most appropriate mask size for that species in CE filtering. We also confirmed that the smoothing process used in the DCHMhas little effect on the accuracy of CE filtering.
机译:我们描述了冠提取(CE)过滤,以使用机载光检测和测距派生的数字树冠高度模型(DCHM)来准确确定各种针叶树种的树尖位置。此方法使用正方形的蒙版,边缘带有边框,该蒙版与DCHM图像中的像素重叠;当没有像素触摸该帧时,将位于中心的像素提取为树冠像素。通过从树冠中的像素中选择具有最大高度的像素来确定每棵树的顶点。我们比较了该方法和其他两种方法(局部最大滤波和冠层分割方法)对几种物种的性能。使用适当的遮罩尺寸选择,CE过滤对于大多数树种而言具有最准确的结果。对于CE过滤,所有树种的平均遗漏,佣金和总误差分别为8.1%,1.6%和9.7%。比较每种物种从DCHM估计的掩模尺寸和冠层直径,可以发现每种物种的最小冠层直径都接近于CE过滤中该物种最合适的掩模尺寸。我们还确认了DCHM中使用的平滑过程对CE过滤的精度影响很小。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号