首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >SUPERVOXEL-BASED MULTI-SCALE POINT CLOUD SEGMENTATION USING FNEA FOR OBJECT-ORIENTED ROCK SLOPE CLASSIFICATION USING TLS
【24h】

SUPERVOXEL-BASED MULTI-SCALE POINT CLOUD SEGMENTATION USING FNEA FOR OBJECT-ORIENTED ROCK SLOPE CLASSIFICATION USING TLS

机译:基于SuperveCel的多尺度点云分割,使用FNEA使用TLS面向对象的摇滚分类

获取原文
           

摘要

Computer vision applications have been increasingly gaining space in the field of remote sensing and geosciences for automated terrain classification and semantic labelling purposes. The continuous and rapid development of monitoring techniques and enhancements in the spatial resolution of sensors have increased the demand for new remote sensing data analysis approaches. For semantic labelling of 2D (or 2.5D) image terrain representations for rock slopes, it has been shown that Object-Based Image Analysis (OBIA) results in high efficiency and accurate identification of landslide hazards. However, the application of such object-based approaches in 3D point cloud analysis is still under development for geospatial data analysis. In the field of engineering geology, which deals with complex rural landscapes, frequently the analysis needs to be conducted based solely on 3D geometrical information accounting for multiple scales simultaneously. In this study, the primary segmentation step of the object-based model is applied to a TLS-derived point cloud collected at a landslide-active rock slope. The 3D point cloud segmentation methodology proposed here builds on the principles of the Fractal Net Evolution Approach (FNEA). The objective is to provide a geometry-based point cloud segmentation framework that preserves the 3D character of the data throughout the process and favours the multi-scale analysis. The segmentation is performed on the basis of supervoxels based on purely geometrical local descriptors derived directly from the TLS point clouds and comprises the basis for the subsequent steps towards the development of an efficient Object-Based Point cloud Analysis (OBPA) framework in rock slope stability assessment by adding semantic meaning to the data through a homogenization process.
机译:计算机视觉应用程序越来越多地增加了自动化地形分类和语义标记目的的远程传感和地球科学领域的空间。传感器空间分辨率的监测技术和增强功能的连续和快速发展增加了对新的遥感数据分析方法的需求。对于2D(或2.5D)图像地形标记的岩石斜坡的地形表示,已经表明,基于对象的图像分析(OBIA)导致高效率和准确识别滑坡危险。然而,在地理空间数据分析中仍在开发基于对象的3D点云分析中的这种基于对象的方法。在工程地质领域,涉及复杂的农村景观,经常需要仅基于3D几何信息同时进行多种尺度的3D几何信息进行分析。在该研究中,基于对象的模型的主要分割步骤应用于在滑坡活跃的摇滚斜面收集的TLS导出的点云。这里提出的3D点云分割方法构建了分形净进化方法(FNEA)的原理。目的是提供一种基于几何的点云分割框架,其在整个过程中保留数据的3D字符,并求多尺度分析。基于基于直接来自TLS点云的纯几何本地描述符的基于超级性地几何本地描述符来执行分割,并包括随后朝向摇滚稳定性中发展有效的对象的点云分析(OBPA)框架的后续步骤的基础通过均质过程向数据添加语义含义来评估。

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