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首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >AUTOMATIC CO-REGISTRATION OF AERIAL IMAGERY AND UNTEXTURED MODEL DATA UTILIZING AVERAGE SHADING GRADIENTS
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AUTOMATIC CO-REGISTRATION OF AERIAL IMAGERY AND UNTEXTURED MODEL DATA UTILIZING AVERAGE SHADING GRADIENTS

机译:利用平均阴影梯度自动映射航空影像和非结构化模型数据

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摘要

The comparison of current image data with existing 3D model data of a scene provides an efficient method to keep models up to date. In order to transfer information between 2D and 3D data, a preliminary co-registration is necessary. In this paper, we present a concept to automatically co-register aerial imagery and untextured 3D model data. To refine a given initial camera pose, our algorithm computes dense correspondence fields using SIFT flow between gradient representations of the model and camera image, from which 2D–3D correspondences are obtained. These correspondences are then used in an iterative optimization scheme to refine the initial camera pose by minimizing the reprojection error. Since it is assumed that the model does not contain texture information, our algorithm is built up on an existing method based on Average Shading Gradients (ASG) to generate gradient images based on raw geometry information only. We apply our algorithm for the co-registering of aerial photographs to an untextured, noisy mesh model. We have investigated different magnitudes of input error and show that the proposed approach can reduce the final reprojection error to a minimum of 1.27?±?0.54 pixels, which is less than 10% of its initial value. Furthermore, our evaluation shows that our approach outperforms the accuracy of a standard Iterative Closest Point (ICP) implementation.
机译:当前图像数据与场景的现有3D模型数据的比较提供了一种使模型保持最新状态的有效方法。为了在2D和3D数据之间传输信息,必须进行初步的共注册。在本文中,我们提出了一种自动共同注册航空影像和无纹理3D模型数据的概念。为了优化给定的初始相机姿态,我们的算法使用模型和相机图像的梯度表示之间的SIFT流计算密集的对应字段,从而获得2D–3D对应关系。然后,将这些对应关系用于迭代优化方案中,以通过最小化重投影误差来优化初始摄像机姿态。由于假定该模型不包含纹理信息,因此我们的算法是基于现有的基于平均阴影梯度(ASG)的方法构建的,仅基于原始几何信息生成梯度图像。我们将用于航空照片的共同配准的算法应用到无纹理,嘈杂的网格模型中。我们研究了不同的输入误差幅度,结果表明,该方法可以将最终的重投影误差减小到最小1.27?±?0.54像素,小于其初始值的10%。此外,我们的评估表明,我们的方法优于标准迭代最近点(ICP)实施的准确性。

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