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Quality-based registration refinement of airborne LiDAR and photogrammetric point clouds

机译:空中激光器和摄影测量点云的质量注册细化

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摘要

A big challenge in geodata processing is the seamless and accurate integration of airborne LiDAR (Light Detection And Ranging) and photogrammetric point clouds performed by properly considering their high variations in resolution and precision. In this paper we propose a new approach to co-register airborne point clouds acquired by LiDAR sensors and photogrammetric algorithms, assuming that only dense point clouds from both mapping methods are available, without LiDAR raw data nor flight trajectories. First, semantically segmented point clouds are quality-wise evaluated by assigning sensor-specific quality features to each 3D point. Then, these quality features are aggregated in order to assign a score to each 3D point based on its quality. Finally, using a voxel-based structure, a filtering step is performed to select only the best points used for the registration refinement. We assess the performance of the proposed method on two different case studies to demonstrate its advantages compared to a traditional ICP-based approach. The code of the implemented method is available at https://github.com/3DOM-FBK/HyRe.
机译:地理数据处理中的一个大挑战是通过正确考虑分辨率和精度的高变化来执行空中激光器(光检测和测距)和摄影测量点云的无缝和准确集成。在本文中,我们提出了一种新方法来注册LIDAR传感器和摄影测量算法的共同注册空中点云,假设只有来自两个映射方法的密集点云都可以使用,而没有LIDAR RAW数据和飞行轨迹。首先,通过将传感器特定的质量特征分配给每个3D点来评估语义分段点云。然后,汇总这些质量特征,以基于其质量为每个3D点分配分数。最后,使用基于体素的结构,执行过滤步骤以仅选择用于注册细化的最佳点。我们评估了两个不同案例研究的提出方法的表现,以证明其优势与传统的基于ICP的方法相比。实现方法的代码可在https://github.com/3dom-fbk/hyre中获得。

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