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A simplified method based on terrain complexity for LiDAR point cloud and its uncertainty analysis

机译:LiDAR点云基于地形复杂度的简化方法及其不确定性分析

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LiDAR is a technology to acquire object surface measurements which integrates GPS, IMU, laser scanning and ranging system and imaging devices together. LIDAR technology has the characteristics of highly automation, short data production cycle, the little effect of external environment and high precision and accuracy to acquire measurement information. But the number of HDAR point cloud is huge. When using large amounts of point cloud data to construct DEM, instead of improving the accuracy of DEM no significant effect, it will lead to the rapid decline in data processing speed. So it is necessary to simplify the LiDAR point cloud. When simplifying the point cloud, the criterions of point cloud simplification directly influence the distribution and quality of retention points. Usually, the point simplification criteria are based on topographic feature. Hence, this paper will proposal a new approach based on terrain complexity metrics to simplify LiDAR point cloud. Terrain complexity index present a comprehensive description of topographic features. First the index is calculated based on the existing rough precision DEM data; next, find out the point cloud simplification threshold according to the index; then set simplify rules to retain the feature points and simplify the useless points; finally, using geostatistical method, high accuracy DEM is constructed by the retention points and the precision and accuracy of LiDAR point cloud simplification is evaluated. The method will be expected to improve the precision and accuracy of LiDAR point cloud simplification. The experiment shows that the proposed simplified method can realize the simplification of LiDAR point cloud, identify terrain feature points effectively, improve the efficiency of the algorithm greatly and help to generate DEMs with a higher precision.
机译:LiDAR是一种用于获取物体表面测量值的技术,该技术将GPS,IMU,激光扫描和测距系统以及成像设备集成在一起。 LIDAR技术具有自动化程度高,数据产生周期短,外部环境影响小,获取测量信息的精度高等特点。但是HDAR点云的数量巨大。当使用大量的点云数据构建DEM时,与其提高DEM的准确性没有明显的作用,反而会导致数据处理速度的迅速下降。因此有必要简化LiDAR点云。在简化点云时,简化点云的标准直接影响保留点的分布和质量。通常,点简化标准基于地形特征。因此,本文将提出一种基于地形复杂性指标的新方法来简化LiDAR点云。地形复杂度指数对地形特征进行了全面的描述。首先,根据现有的粗精度DEM数据计算指标;然后,其次,根据指标找出点云简化阈值。然后设置简化规则以保留特征点并简化无用的点;最后,利用地统计学方法,利用保留点构造了高精度的DEM,并评估了LiDAR点云简化的精度和准确性。该方法有望提高LiDAR点云简化的精度和准确性。实验表明,所提出的简化方法可以实现LiDAR点云的简化,有效地识别地形特征点,大大提高了算法的效率,有助于生成精度更高的DEM。

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