利用个人激光扫描仪进行桥梁结构健康监测:基于分段的系统点云变形分析

R. Blaskow, Hans-Gerd Maas
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摘要

摘要桥梁结构可采用多种不同方法进行勘测。既有基于图像的方法,利用无人驾驶飞行器 (UAV) 的运动结构,也有地面激光扫描 (TLS) 或两种方法的结合。除了静态地面激光扫描外,还可以使用个人激光扫描系统(PLS)对建筑物进行有效勘测。与静态方法相比,这种方法的优势在于灵活性更高,速度更快。另一方面,精度可能更为重要,在不利的测量条件下,所得到的点云对系统的整体或局部变形更为敏感。例如,临时影响会导致局部映射误差。这些影响包括测量系统运动不均匀或非静态、特征稀少的环境等。本研究调查了使用 PLS 系统采集代表混凝土桥梁外壳的三维点云的情况。我们以桥梁结构为例,展示了一种检测 PLS 点云中可能存在的变形的方法。为此,我们将参考点云(TLS)和 PLS 点云分割成单个群组,并执行基于分段的 ICP 精度配准。上部路段(0.061 米)和支柱段(0.021 米)不同的 RMSE 值以及不同的变换参数表明 PLS 点云存在轻微位移。云与云之间距离的分析表明,路面区域的 Z 方向存在轻微变形。在横向方向上,桥柱区域未发现明显的残余偏差。
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Structural Health Monitoring of Bridges with Personal Laser Scanning: Segment-based Analysis of systematic Point Cloud Deformations
Abstract. Bridge structures can be surveyed using a number of different methods. Established are image-based methods using structure from motion by an unmanned aerial vehicle (UAV), terrestrial laser scanning (TLS), or a combination of both methods. Beyond static terrestrial laser scanning, buildings can also be efficiently surveyed using personal laser scanner (PLS) systems. The advantage here is the greater flexibility and increased speed compared to the static method. On the other hand, the accuracy may be more critical, and the resulting point cloud will be more sensitive to systematic global or local deformations under unfavorable measurement conditions. For example, temporary influences can lead to local mapping errors. These include influences such as uneven measurement system motion or non-static, feature-sparse environments. This study investigates the acquisition of 3D point clouds representing the outer shell of a concrete bridge using a PLS system. We demonstrate a method for detecting possible deformations in PLS point clouds using the example of a bridge structure. For this purpose, the reference (TLS) and the PLS point clouds are segmented into individual clusters and a segment-based ICP fine registration is performed. Different RMSE values for the upper road section (0.061 m) and for the pillar segments (0.021 m) as well as different transformation parameters indicate slight displacements in the PLS point cloud. The analysis of the cloud-to-cloud distances showed that there were slight deformations in the Z direction in the area of the road surface. In the lateral direction, no significant residual deviations were found in the area of the bridge pillars.
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