基于改进LOAM的森林样地调查系统设计与试验
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季华实验室青年创新基金项目(X201171XE200)和贵州省优秀青年科技人才计划项目(黔科合平台人才[2021]5615)


Design and Experiment of Forest Plot Survey System Based on Improved LOAM
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    摘要:

    森林中线、面特征较少等,导致LOAM算法去畸变及配准精度低、鲁棒性差,很难将该算法直接用于森林调查。为此以LOAM算法为基础设计了LiDAR SLAM森林样地调查系统,在SLAM系统工作流程中剔除了遮挡线特征,避免视点与立木切线点作为线特征参与运算;引入二次去畸变、二次配准等模块提高了去畸变、配准的鲁棒性及精度;该系统将激光雷达测量精度、位姿估计精度等先验信息引入去畸变及配准优化算法中,提高去畸变及配准精度。使用32线激光雷达扫描了4块32m×32m的森林样地,利用LiDAR SLAM森林样地调查系统完成样地建图,利用该点云提取的立木位置及胸径与参考数据对比,完成了新型SLAM样地调查系统在森林中建图精度的间接评估。结果显示:立木位置估计值在x、y轴方向的平均误差分别为-0.004m和-0.011m,x、y轴方向均方根误差分别为0.081m和0.083m;胸径估计值的偏差为0.25cm(相对偏差为1.18%),均方根误差为1.03cm(相对均方根误差为5.53%);经与LOAM估计结果相比,改进系统获取的立木位置及胸径精度均提高。结果表明,所设计的LiDAR SLAM森林样地调查系统可用于多线激光雷达扫描森林样地数据的处理,是一种可精确进行森林样地调查的解决方案。

    Abstract:

    The LiDAR frame data can be processed by LiDAR SLAM algorithms to obtain target point cloud of forest plots. As a SLAM algorithm, LOAM can locate and map by extracting line and surface features, which has the advantages of fast computing speed and better robustness than ICP algorithm. However, it is difficult to use this algorithm directly in forest inventory due to poor lines and surface features in forests. A forest LiDAR SLAM system was developed to address the problem as follows: the modules of secondary de-distortion and secondary registration were introduced into the workflow of the new SLAM system to improve the robustness and accuracy of location and mapping;and the priori information, such as LiDAR device measurement accuracy and positional estimation accuracy, was introduced into the optimization algorithm of the de-distortion and registration to improve SLAM accuracy. Four 32m×32m forest sample plots were scanned by 32line LiDAR, and the raw data for the plot point clouds were processed by using the forest SLAM system. An indirect evaluation of the mapping accuracy of the system in forests was completed by comparing the tree position and DBH extracted from the point clouds with the reference data. The results showed that the mean error of the tree position estimates in the x-axis and y-axis directions were -0.004m and -0.011m, respectively. The root mean square error (RMSE) in the x-axis and y-axis directions were 0.081m and 0.083m, respectively. The deviation of the DBH estimates was 0.25cm (relative deviation of 1.18%) and the RMSE was 1.03cm (relative RMSE of 5.53%). And the estimates had higher accuracy compared with the LOAM system estimates. The results showed that the forest LiDAR SLAM system can be used for processing of the plot data scanned by multi-line LiDAR. It was a potential solution for accurate forest inventory.

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范永祥,冯仲科,申朝永,闫飞,苏珏颖,王蔚.基于改进LOAM的森林样地调查系统设计与试验[J].农业机械学报,2022,53(7):291-300. FAN Yongxiang, FENG Zhongke, SHEN Chaoyong, YAN Fei, SU Jueying, WANG Wei. Design and Experiment of Forest Plot Survey System Based on Improved LOAM[J]. Transactions of the Chinese Society for Agricultural Machinery,2022,53(7):291-300.

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  • 收稿日期:2022-03-15
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  • 在线发布日期: 2022-07-10
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