首页 | 本学科首页   官方微博 | 高级检索  
     

基于超体素聚类和局部特征的玉米植株点云雄穗分割
引用本文:朱超,吴凡,刘长斌,赵健翔,林丽丽,田雪莹,苗腾. 基于超体素聚类和局部特征的玉米植株点云雄穗分割[J]. 智慧农业(中英文), 2021, 3(1): 75-85. DOI: 10.12133/j.smartag.2021.3.1.202102-SA001
作者姓名:朱超  吴凡  刘长斌  赵健翔  林丽丽  田雪莹  苗腾
作者单位:沈阳农业大学 信息与电气工程学院,辽宁 沈阳 110866
辽宁省农业信息化工程技术研究中心,辽宁 沈阳 110866
北京派得伟业科技发展有限公司,北京 100097
摘    要:针对当前三维点云处理方法在玉米植株点云中识别雄穗相对困难的问题,提出一种基于超体素聚类和局部特征的玉米植株点云雄穗分割方法.首先通过边连接操作建立玉米植株点云无向图,利用法向量差异计算边权值,并采用谱聚类方法将植株点云分解为多个超体素子区域;随后结合主成分分析方法和点云直线特征提取植株顶部的子区域;最后利用玉米植株点云...

关 键 词:玉米雄穗  三维点云分割  表型检测  超体素聚类  局部特征  主成分分析
收稿时间:2021-02-01

Tassel Segmentation of Maize Point Cloud Based on Super Voxels Clustering and Local Features
ZHU Chao,WU Fan,LIU Changbin,ZHAO Jianxiang,LIN Lili,TIAN Xueying,MIAO Teng. Tassel Segmentation of Maize Point Cloud Based on Super Voxels Clustering and Local Features[J]. Smart Agriculture, 2021, 3(1): 75-85. DOI: 10.12133/j.smartag.2021.3.1.202102-SA001
Authors:ZHU Chao  WU Fan  LIU Changbin  ZHAO Jianxiang  LIN Lili  TIAN Xueying  MIAO Teng
Affiliation:College of Information and Electrical Engineering, Shenyang Agricultural University, Shenyang 110866, China
Liaoning Engineering Research Center for Information Technology in Agriculture, Shenyang 110866, China
Beijing PAIDE Science and Technology Development Company Limited, Beijing 100097, China
Abstract:Accurate and high-throughput maize plant phenotyping is vital for crop breeding and cultivation research. Tassel-related phenotypic parameters are important agronomic traits. However, fully automatic and fine tassel organ segmentation of maize shoots from three-dimensional (3D) point clouds is still challenging. To address this issue, a tassel point cloud segmentation method based on point cloud super voxels clustering and local geometric features was proposed in this study. Firstly, the undirected graph of the maize plant point cloud was established, the edge weights were calculated by using the difference of normal vectors, and the spectral clustering method was used to cluster the point cloud to form multiple super voxel sub-regions. Then, the principal component analysis method was used to find the two end regions of the plant and based on the observation of the straight direction of the bottom stem regions, the top and bottom regions were distinguished by the point cloud linear features. Finally, the tassel points were identified based on the plane local features of the point cloud. The sub-regions of the top region of the plant were classified into leaf regions, tassel regions, and mixed regions by plane local features of the point cloud, the tassel points in the tassel sub-region, and the mixed region were the finally segmented tassel point clouds. In this study, 15 mature maize plants with 3 point cloud densities were tested. Compared with the ground truth segmented manually, the average F1 scores of the tassel segmentation were 0.763, 0.875 and 0.889 when the point cloud density was 0.8/cm, 1.3/cm, and 1.9/cm, respectively. The segmentation accuracy of this method increased with the increase of plant point cloud density. The increase of point cloud density and the number of point clouds mainly affected the calculation results of point cloud plane features in tassel segmentation. When the number of point clouds was small, the top leaf point cloud was relatively sparse. Therefore, the difference between the plane feature of the leaf point and the plane feature of the tassel point was not obvious, which led to the increase of the misclassification of the point cloud. However, the time complexity of the algorithm was O(n3), so the increase in the density and number of point clouds would lead to a significant increase in the running time. Considering the segmentation accuracy and running time, the research obtained the best effect on the mature maize plants with a point cloud density of 1.3/cm and an average number of 15,000. The segmentation F1 score reached 0.875 and the running time was 6.85 s. The results showed that this method could extract tassels from maize plant point cloud, and provided technical support for the research and application of high-throughput phenotyping and three-dimensional reconstruction of maize.
Keywords:maize tassel  3D point cloud segmentation  phenotyping  super voxels clustering  local features  principal component analysis  
点击此处可从《智慧农业(中英文)》浏览原始摘要信息
点击此处可从《智慧农业(中英文)》下载全文
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司  京ICP备09084417号