首页> 外文会议>第21届国际摄影测量与遥感大会(ISPRS 2008)论文集 >A FULLY AUTOMATED PROCEDURE FOR DELINEATION AND CLASSIFICATION OF FOREST AND NON-FOREST VEGETATION BASED ON FULL WAVEFORM LASER SCANNER DATA
【24h】

A FULLY AUTOMATED PROCEDURE FOR DELINEATION AND CLASSIFICATION OF FOREST AND NON-FOREST VEGETATION BASED ON FULL WAVEFORM LASER SCANNER DATA

机译:基于全波形激光扫描仪数据的森林和非植被植被的全自动分类和分类程序

获取原文

摘要

Detailed geo-referenced information on the distribution and occurrence of forest and non-forest vegetation is essential for many different disciplines e.g. forestry, nature conservation, agriculture, landscaping and urban planning. This article presents a digital image processing procedure for automated delineation and classification of forest and non-forest vegetation which is solely using full waveform laser scanner data as input. The delineation of regions covered by vegetation is based on the assumption that many laser reflections will be found inside of vegetation from different vegetation layers between the top of the canopy and the bare earth which particularly applies to multiple echoes from full waveform data. The vegetation regions are classified into forest and non-forest vegetation based on criteria which are generally used for vegetation mapping such as height of the vegetation, tree crown cover, size and width of vegetation objects. Non-Forest vegetation is further classified into single tree objects or connected groups of trees based on geometrical features. To verify the applicability for large areas the procedure was tested in a study site in the Southern Black Forest Nature Park, Germany with a total size of 7.68 km2. An accuracy assessment of the automated method is given with a comparison to a delineation and classification result done by a human operator based on RGB true-orthophotos and with a terrestrial survey. An error matrix was used to verify the classification result. An overall accuracy of 97.73% was reached. The capability and the limitations of the method are discussed.
机译:详细的地理参考信息有关森林和非森林植被的分布和发生的信息对于许多不同的学科来说至关重要。林业,自然保护,农业,景观美化和城市规划。本文介绍了用于自动描绘和森林和非森林植被分类的数字图像处理程序,这些过程仅使用全波形激光扫描仪数据作为输入。植被覆盖的区域的描绘是基于许多激光反射的假设,其中许多激光反射在覆盖层顶部和裸地之间的不同植被层内部发现,这特别适用于来自全波形数据的多个回波。基于标准,植被区分为森林和非森林植被,这些标准通常用于植被映射,例如植被的高度,树冠覆盖,植被物体的尺寸和宽度。非森林植被进一步分为单树对象或基于几何特征的树木组。为了验证大面积的适用性,该程序在德国南部黑林自然公园的一家学习现场进行了测试,总面积为7.68 km2。给出了自动化方法的准确性评估,其基于RGB真正的矫正体和地面调查,以人工操作员完成的描绘和分类结果进行了比较。错误矩阵用于验证分类结果。达到了97.73%的整体准确性。讨论了该方法的能力和局限性。

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