基于3DLiDAR感知的大田花生长势信息获取
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华南农业大学

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S220;S24

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国家现代农业产业技术体系


Acquisition of growth information of peanut fields based on 3D LiDAR perception
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    摘要:

    为实现大田环境下快速准确获取作物株高、体积等长势信息,本文以花生为研究对象,采用3D LiDAR感知技术获取大田花生点云数据,经配准、去噪等处理,构建三维点云模型;构建基于KD-TREE的点云植株分割算法对大田花生植株点云数据进行单株分割,采用凸包算法估计植株体积、旋转卡壳法提取株高和最大冠幅,获取花生得长势信息。在花生种植试验区域分别采集三个不同时期花生植株得点云数据,采用本文方法开展花生单株分割和提取株高与最大冠幅的验证试验,考察长势信息获取精度,采用召回率与精确率来对结果进行精度评价。试验结果表明,大田花生单株分割的召回率与精确率均可达85%以上,表明该方法应用于大田花生点云数据分割具有较好的准确性与完整性;提取的花生株高与最大冠幅等参数与人工测量值进行对比,三个不同时期植株高度的平均绝对百分比误差分别为6.2705%、4.3675%和4.9859%,最大冠幅为7.1140%、5.6063%和4.5410%,其株高均方根误差分别为0.0096m、0.0152m和0.0271m,最大冠幅均方根误差分别为0.0110m 、0.0201m和0.0203m;株高数据线性回归决定系数分别为0.88797、0.95101和0.84183,最大冠幅数据线性回归决定系数分别为0.93431、0.93179和0.92717,验证了使用点云测量花生生长数据的准确性与可行性,且可实现花生表型参数高精度、非破坏性提取。本研究成果为花生的种植和育种提供重要的技术支持。

    Abstract:

    In order to rapidly and accurately obtain crop growth information such as plant height and volume in the field environment, this paper takes peanuts as the research object and adopts 3D LiDAR perception technology to obtain peanut point cloud data in the field. After registration, denoising, and other processing, a three-dimensional point cloud model is constructed. The point cloud plant segmentation method based on KD-TREE is used to segment individual peanut plants from the point cloud data. The convex hull algorithm is used to estimate plant volume, and the rotating caliper method is utilized to extract plant height and maximum canopy width, thereby obtaining peanut growth information. Point cloud data of peanut plants at three different growth stages were collected in a peanut planting experimental area. The proposed method was used to carry out verification tests for individual peanut plant segmentation and extraction of plant height and maximum canopy width. The accuracy of growth information acquisition was investigated, and recall and precision rates were used to evaluate the results. Experimental results showed that the recall and precision rates of individual peanut plant segmentation in the field could reach over 85%, indicating that the proposed method has good accuracy and completeness for segmenting peanut point cloud data in the field. The extracted parameters such as peanut plant height and maximum canopy width were compared with manual measurements. The average absolute percentage errors of plant height in the three different growth stages were 6.2705%, 4.3675%, and 4.9859%, respectively, and the maximum canopy widths were 7.1140%, 5.6063%, and 4.5410%, respectively. The root mean square errors of plant height were 0.0096m, 0.0152m, and 0.0271m, respectively, and the root mean square errors of the maximum canopy width were 0.0110m, 0.0201m, and 0.0203m, respectively. The linear regression determination coefficients of plant height data were 0.88797, 0.95101, and 0.84183, respectively, and the linear regression determination coefficients of maximum canopy width data were 0.93431, 0.93179, and 0.92717, respectively. These results verify the accuracy and feasibility of using point clouds to measure peanut growth data, enabling high-precision, non-destructive extraction of peanut phenotypic parameters. The research results provide important technical support for peanut cultivation and breeding.

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  • 收稿日期:2024-05-01
  • 最后修改日期:2024-06-14
  • 录用日期:2024-08-27
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