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Point Cloud Generation from Aerial Image Data Acquired by a Quadrocopter Type Micro Unmanned Aerial Vehicle and a Digital Still Camera

机译:从直升机类型的微型无人机和数码相机获取的航空图像数据生成点云

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The objective of this investigation was to develop and investigate methods for point cloud generation by image matching using aerial image data collected by quadrocopter type micro unmanned aerial vehicle (UAV) imaging systems. Automatic generation of high-quality, dense point clouds from digital images by image matching is a recent, cutting-edge step forward in digital photogrammetric technology. The major components of the system for point cloud generation are a UAV imaging system, an image data collection process using high image overlaps, and post-processing with image orientation and point cloud generation. Two post-processing approaches were developed: one of the methods is based on Bae Systems’ SOCET SET classical commercial photogrammetric software and another is built using Microsoft®’s Photosynth™ service available in the Internet. Empirical testing was carried out in two test areas. Photosynth processing showed that it is possible to orient the images and generate point clouds fully automatically without any a priori orientation information or interactive work. The photogrammetric processing line provided dense and accurate point clouds that followed the theoretical principles of photogrammetry, but also some artifacts were detected. The point clouds from the Photosynth processing were sparser and noisier, which is to a large extent due to the fact that the method is not optimized for dense point cloud generation. Careful photogrammetric processing with self-calibration is required to achieve the highest accuracy. Our results demonstrate the high performance potential of the approach and that with rigorous processing it is possible to reach results that are consistent with theory. We also point out several further research topics. Based on theoretical and empirical results, we give recommendations for properties of imaging sensor, data collection and processing of UAV image data to ensure accurate point cloud generation.
机译:这项研究的目的是开发和研究通过使用直升机类型的微型无人机(UAV)成像系统收集的航空图像数据进行图像匹配来生成点云的方法。通过图像匹配从数字图像自动生成高质量的密集点云是数字摄影测量技术的最新前沿技术。点云生成系统的主要组件是无人机成像系统,使用高图像重叠的图像数据收集过程以及具有图像方向和点云生成的后处理。开发了两种后处理方法:一种方法是基于Bae Systems的SOCET SET经典商业摄影测量软件,另一种方法是使用Internet上的Microsoft ®的Photosynth™服务构建的。在两个测试区域进行了实证测试。光合作用处理表明,可以自动定位图像并自动生成点云,而无需任何先验定向信息或进行交互工作。摄影测量生产线提供了密集而精确的点云,这些点云遵循摄影测量的理论原理,但也检测到一些伪影。来自Photosynth处理的点云比较稀疏和嘈杂,这在很大程度上是由于该方法并未针对密集点云的生成进行优化。为了达到最高的精度,需要使用自校准进行仔细的摄影测量处理。我们的结果证明了该方法的高性能潜力,并且通过严格的处理有可能达到与理论一致的结果。我们还指出了一些进一步的研究主题。根据理论和经验结果,我们对成像传感器的特性,UAV图像数据的数据收集和处理提供了建议,以确保准确生成点云。

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