Grid and homogeneity-based ground segmentation using light detection and ranging three-dimensional point cloud

IF 1.4 4区 地球科学 Q4 ENVIRONMENTAL SCIENCES Journal of Applied Remote Sensing Pub Date : 2023-09-27 DOI:10.1117/1.jrs.17.038506
Ciyun Lin, Jie Yang, Bowen Gong, Hongchao Liu, Ganghao Sun
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Abstract

Ground point identification and segmentation are fundamental to the light detection and ranging (LiDAR) based environment perception because they affect the accuracy and computational efficiency in the following data processing steps. A common problem that results in over- and under-segmentation occurs when the objects of interest are nonhomogeneous, and the sampling density is uneven. This study addresses this issue using grid- and homogeneity-based approaches. This work began with a combined conditional and voxel filtering approach to shrink the spatial range and reduce the amount of point-cloud data. The spatial range was then divided into a concentric circular grid to reduce the complexity of data processing. A dynamic threshold model was used to classify the cloud points to improve the accuracy of ground-point identification on uneven, broken, and sloped roads. Additionally, a point cloud homogeneity model was used to optimize the ground point identification results in areas with vegetation. The experimental study was conducted based on the data provided in the semantic KITTI dataset, wherein comprehensive comparisons were made with state-of-the-art algorithms. The average precision, recall, F1, and running time of the proposed method were 92.5%, 90.89%, 0.92, and 0.146 s, respectively, outperforming most of the selected models in balanced accuracy and computational efficiency.
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基于网格和同质的三维点云光探测测距地面分割
地点识别和分割是基于光探测和测距(LiDAR)的环境感知的基础,因为它们影响着后续数据处理步骤的精度和计算效率。当感兴趣的对象是非均匀的,采样密度不均匀时,导致过度分割和欠分割的常见问题会发生。本研究使用基于网格和同质性的方法解决了这个问题。这项工作从条件滤波和体素滤波相结合的方法开始,以缩小空间范围并减少点云数据量。然后将空间范围划分为同心圆形网格,以减少数据处理的复杂性。采用动态阈值模型对云点进行分类,提高不平整、破碎和倾斜道路上地点识别的精度。此外,利用点云均匀性模型对植被覆盖区域的地面点识别结果进行优化。实验研究是基于语义KITTI数据集提供的数据进行的,其中与最先进的算法进行了全面比较。该方法的平均准确率、召回率、F1和运行时间分别为92.5%、90.89%、0.92和0.146 s,在平衡准确率和计算效率方面优于大多数选择的模型。
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来源期刊
Journal of Applied Remote Sensing
Journal of Applied Remote Sensing 环境科学-成像科学与照相技术
CiteScore
3.40
自引率
11.80%
发文量
194
审稿时长
3 months
期刊介绍: The Journal of Applied Remote Sensing is a peer-reviewed journal that optimizes the communication of concepts, information, and progress among the remote sensing community.
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