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Model-based conifer crown surface reconstruction from multi-ocular high-resolution aerial imagery.

机译:从多眼高分辨率航空影像重建基于模型的针叶树冠表面。

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Tree crown parameters such as width, height, shape and crown closure are desirable in forestry and ecological studies, but they are time-consuming and labor intensive to measure in the field. The stereoscopic capability of high-resolution aerial imagery provides a way to crown surface reconstruction. Existing photogrammetric algorithms designed to map terrain surfaces, however, cannot adequately extract crown surfaces, especially for steep conifer crowns.; Considering crown surface reconstruction in a broader context of tree characterization from aerial images, we develop a rigorous perspective tree image formation model to bridge image-based tree extraction and crown surface reconstruction, and an integrated model-based approach to conifer crown surface reconstruction. Based on the fact that most conifer crowns are in a solid geometric form, conifer crowns are modeled as a generalized hemi-ellipsoid. Both the automatic and semi-automatic approaches are investigated to optimal tree model development from multi-ocular images. The semi-automatic 3D tree interpreter developed in this thesis is able to efficiently extract reliable tree parameters and tree models in complicated tree stands. This thesis starts with a sophisticated stereo matching algorithm, and incorporates tree models to guide stereo matching. The following critical problems are addressed in the model-based surface reconstruction process: (1) the problem of surface model composition from tree models, (2) the occlusion problem in disparity prediction from tree models, (3) the problem of integrating the predicted disparities into image matching, (4) the tree model edge effect reduction on the disparity map, (5) the occlusion problem in orthophoto production, and (6) the foreshortening problem in image matching, which is very serious for conifer crown surfaces. Solutions to the above problems are necessary for successful crown surface reconstruction.; The model-based approach was applied to recover the canopy surface of a dense redwood stand using tri-ocular high-resolution images scanned from 1:2,400 aerial photographs. The results demonstrate the approach's ability to reconstruct complicated stands. The model-based approach proposed in this thesis is potentially applicable to other surfaces recovering problems with a priori knowledge about objects.
机译:树冠参数,例如宽度,高度,形状和树冠闭合度在林业和生态学研究中是理想的,但在野外测量时既费时又费力。高分辨率航空影像的立体功能为冠面重建提供了一种方法。但是,现有的用于绘制地形表面的摄影测量算法无法充分提取树冠表面,特别是对于陡峭的针叶树树冠。考虑到在从航空图像进行树表征的更广泛上下文中的树冠表面重建,我们开发了严格的透视树图像形成模型来桥接基于图像的树提取和树冠表面重建,以及基于模型的集成方法来进行针叶树树冠表面重建。基于大多数针叶树冠呈实心几何形状的事实,将针叶树冠建模为广义的半椭圆形。研究了自动和半自动方法,以从多眼图像中优化树模型的开发。本文开发的半自动3D树解释器能够有效地提取复杂树桩中可靠的树参数和树模型。本文从复杂的立体声匹配算法入手,并结合树模型来指导立体声匹配。在基于模型的表面重建过程中解决了以下关键问题:(1)树模型的表面模型组成问题,(2)树模型的视差预测中的遮挡问题,(3)集成预测的问题图像匹配中的视差,(4)视差图上树模型边缘效应的减少,(5)正射影像生产中的遮挡问题,以及(6)图像匹配中的缩短问题,这对于针叶树冠表面非常严重。解决上述问题对于成功的牙冠表面重建是必要的。基于模型的方法适用于使用从1:2,400航空照片中扫描的三目高分辨率图像来恢复茂密的红木林冠的冠层表面。结果证明了该方法具有重建复杂林分的能力。本文提出的基于模型的方法可能适用于其他具有对象先验知识的表面恢复问题。

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