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Window detection employing a global regularity level set from oblique unmanned aerial vehicle images and point clouds

机译:窗口检测采用斜无人驾驶飞行器图像和点云设定的全球规律级别

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摘要

Detailed building facade structures are significant parts of three-dimensional building models. A photogrammetric point cloud, generated from oblique unmanned aerial system imagery, is a type of data applied in building reconstruction. Its positive characteristics, alongside its challenging qualities, have provoked discussions related to our study. To obtain highly accurate window detection results, we propose a regular window detection method using a global regularity level set. Our method first detects the window boundaries from point clouds using a hole-based boundary extraction method. The minimum bounding rectangle of each boundary point cloud is then used specifically to represent the window. Next, facade partitioning is applied to subdivide the rectified facade images into a series of slices followed by cells. Each cell contains only one window rectangle after the processing. Finally, a global regularity level set algorithm is developed to optimize rectangular windows in horizontal and vertical slices using facade images. The proposed method was validated through a comparison with the slicing method on data from two facades. The accuracy of the window sizes in height and width was also discussed. The experiment results indicate that our method can obtain regular window locations and shapes from photogrammetric point clouds. (C) 2020 Society of Photo-Optical Instrumentation Engineers (SPIE)
机译:详细的建筑立面结构是三维建筑模型的重要部分。从倾斜无人的空中系统图像产生的摄影测量点云,是一种在建筑重建中应用的数据。它的积极特征与其具有挑战性的品质一起引起了与我们的研究有关的讨论。为了获得高度准确的窗口检测结果,我们提出了一种使用全局规则级别设置的常规窗口检测方法。我们的方法首先使用基于空穴的边界提取方法从点云中检测窗口边界。然后,每个边界点云的最小边界矩形专门用于表示窗口。接下来,应用外立面分区以将整流的外观图像细分为一系列切片,然后是细胞。每个单元格在处理后仅包含一个窗口矩形。最后,开发了全局规则级别集合算法以使用外观图像优化水平和垂直切片中的矩形窗口。通过与来自两个立面的数据的切片方法进行比较来验证所提出的方法。还讨论了高度和宽度窗口尺寸的精度。实验结果表明,我们的方法可以从摄影测量点云获得常规窗口位置和形状。 (c)2020光学仪表工程师协会(SPIE)

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