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Analysis and Exploitation of Automatically Generated Scene Structure from Aerial Imagery.

机译:航空影像自动生成场景结构的分析与开发。

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摘要

The recent advancements made in the field of computer vision, along with the ever increasing rate of computational power has opened up opportunities in the field of automated photogrammetry. Many researchers have focused on using these powerful computer vision algorithms to extract three-dimensional point clouds of scenes from multi-view imagery, with the ultimate goal of creating a photo-realistic scene model. However, geographically accurate three-dimensional scene models have the potential to be exploited for much more than just visualization. This work looks at utilizing automatically generated scene structure from near-nadir aerial imagery to identify and classify objects within the structure, through the analysis of spatial-spectral information. The limitation to this type of imagery is imposed due to the common availability of this type of aerial imagery. Popular third-party computer-vision algorithms are used to generate the scene structure. A voxel-based approach for surface estimation is developed using Manhattan-world assumptions. A surface estimation confidence metric is also presented. This approach provides the basis for further analysis of surface materials, incorporating spectral information. Two cases of spectral analysis are examined: when additional hyperspectral imagery of the reconstructed scene is available, and when only R,G,B spectral information can be obtained. A method for registering the surface estimation to hyperspectral imagery, through orthorectification, is developed. Atmospherically corrected hyperspectral imagery is used to assign reflectance values to estimated surface facets for physical simulation with DIRSIG. A spatial-spectral region growing-based segmentation algorithm is developed for the R,G,B limited case, in order to identify possible materials for user attribution. Finally, an analysis of the geographic accuracy of automatically generated three-dimensional structure is performed. An end-to-end, semi-automated, workflow is developed, described, and made available for use.
机译:计算机视觉领域的最新进展以及计算能力的不断提高为自动摄影测量领域开辟了机遇。许多研究人员致力于使用这些功能强大的计算机视觉算法从多视图图像中提取场景的三维点云,最终目的是创建逼真的场景模型。但是,地理上精确的三维场景模型具有的潜力远不只是可视化。这项工作着眼于通过分析空间光谱信息,利用从近天底航空影像自动生成的场景结构来识别和分类结构中的对象。由于这种航拍图像的普遍可用性,对这种类型的影像施加了限制。流行的第三方计算机视觉算法用于生成场景结构。使用曼哈顿世界的假设,开发了一种基于体素的表面估计方法。还提出了表面估计置信度度量。这种方法为结合光谱信息对表面材料进行进一步分析提供了基础。考察了光谱分析的两种情况:何时可以获得重建场景的其他高光谱图像,以及何时只能获得R,G,B光谱信息。提出了一种通过正射校正将表面估计值注册到高光谱图像的方法。大气校正的高光谱图像用于将反射率值分配给估计的表面,以使用DIRSIG进行物理模拟。针对R,G,B受限情况,开发了一种基于空间光谱区域增长的分割算法,以识别可能的用户归属资料。最后,对自动生成的三维结构的地理精度进行了分析。开发,描述并提供了端到端,半自动化的工作流程,并可供使用。

著录项

  • 作者

    Nilosek, David R.;

  • 作者单位

    Rochester Institute of Technology.;

  • 授予单位 Rochester Institute of Technology.;
  • 学科 Remote Sensing.
  • 学位 Ph.D.
  • 年度 2014
  • 页码 205 p.
  • 总页数 205
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 公共建筑;
  • 关键词

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