Terrestrial laser scanning (TLS) can obtain tree point cloud with high precision and high density. Efficient classification of wood points and leaf points is essential to study tree structural parameters and ecological characteristics. By using both the intensity and spatial information, a three-step classification and verification method was proposed to achieve automated wood-leaf classification. Tree point cloud was classified into wood points and leaf points by using intensity threshold, neighborhood density and voxelization successively. Experiment was carried in Haidian Park, Beijing, and 24 trees were scanned by using the RIEGL VZ-400 scanner. The tree point clouds were processed by using the proposed method, whose classification results were compared with the manual classification results which were used as standard results. To evaluate the classification accuracy, three indicators were used in the experiment, which are Overall Accuracy (OA), Kappa coefficient (Kappa) and Matthews correlation coefficient (MCC). The ranges of OA, Kappa and MCC of the proposed method are from 0.9167 to 0.9872, from 0.7276 to 0.9191, and from 0.7544 to 0.9211 respectively. The average values of OA, Kappa and MCC are 0.9550, 0.8547 and 0.8627 respectively. Time cost of wood-leaf classification was also recorded to evaluate the algorithm efficiency. The average processing time are 1.4 seconds per million points. The results showed that the proposed method performed well automatically and quickly on wood-leaf classification based on the experimental dataset.
翻译:地面激光扫描(TLS)能够以高精度和高密度获得树点云。木点和叶点的有效分类对于研究树结构参数和生态特征至关重要。通过使用强度和空间信息,提出了三步分类和核查方法,以实现木叶自动分类。树点云通过连续使用强度阈值、街区密度和氧化性相关系数分为木点和叶点。在北京海迪安公园进行了实验,用RIEGL VZ-400扫描仪扫描了24棵树。树点云是通过采用拟议方法处理的,其分类结果与作为标准结果的手工分类结果相比较。为评估分类准确性,在试验中使用了三个指标,即总体精度(OAA)、卡帕系数(Kappa)和马修相关系数(MCC)。拟议方法的OA、Kappa和MC的范围从0.9167至0.9872,从0.7276至0.91191,以及从0.7544至0.911美元分别使用拟议方法处理。OA、Kappa和MCLA-LA的分类结果平均值值为0.855,根据0.84和0.451,对木材的平均成本进行了快速评估。根据0.85和0.85计算,对0.85进行计算,对0.85,对0.85和0.85,对木材平均数据进行了记录,对0.85和0.85,对0.85和0.85,对0.85和0.85和0.85和0.85和0.85页的计算,对木材的平均数据进行了计算。根据时间方法进行了计算。根据时间段的计算。根据时间方法,对0.85。