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北京理工大学 机电动态控制重点实验室, 北京 100081
Received:11 September 2024,
Published Online:28 June 2025,
Published:10 June 2025
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Weihan WANG, Mingze GAO, Xiaolong SHI, et al. Modeling and Verification of Dynamic Imaging of UAV-borne Line-array LiDAR[J]. Acta Armamentarii, 2025, 46(6): 240836.
Weihan WANG, Mingze GAO, Xiaolong SHI, et al. Modeling and Verification of Dynamic Imaging of UAV-borne Line-array LiDAR[J]. Acta Armamentarii, 2025, 46(6): 240836. DOI: 10.12382/bgxb.2024.0836.
针对无人机成像场景典型目标点云数据集稀缺的问题
建立机载线阵激光雷达动态成像模型
提出一种基于柱体素的点云目标检测算法对仿真数据真实性进行验证。基于虚拟仿真平台建立典型目标模型与崎岖地形、伪装覆盖和植被遮蔽等典型场景
结合激光点云获取仿真模型、机载平台运动模型、拼接成像及畸变校正方法
获取激光点云数据集
基于重叠面积的完整度判别标注方法进行数据集标注;采用柱体素特征提取模块处理目标顶部特征
通过标注的仿真数据集训练点云目标检测算法
并在基于等效实验获取的真实数据集上进行算法评价。检测算法在实测数据集上的识别准确率为93.2%
评价结果表明机载线阵激光雷达动态成像模型具有较高的可信度
仿真数据能够反映真实目标特征。
A dynamic imaging model for UAV(Unmanned Aerial Vehicle)-borne line-array LiDAR is proposed to address the scarcity of point cloud datasets in UAV imaging scene.A pillar-voxel-based point cloud target detection algorithm is proposed to verify the authenticity of the simulation data.The typical target models and the typical scenarios with rugged terrain
camouflage
and vegetation cover are established based on a virtual simulation platform.A laser point cloud dataset is generated by using the point cloud simulation model
UAV motion model
stitching imaging and distortion correction methods.The dataset is annotated by using a completeness judgment method based on overlapping areas.A pilar-voxel feature extraction module is used to process the target’s top features.The point cloud target detection algorithm is trained using the annotated simulation dataset
and evaluated on a real dataset obtained from equivalent experiments.The proposed algorithm achieves an accuracy rate of 93.2% on the real dataset.The evaluated result indicates that the simulated data effectively reflect the true characteristics of the targets
and the dynamic imaging model has high credibility.
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