Geometric Feature Characterization of Apple Trees from 3D LiDAR Point Cloud Data.

IF 2.7 Q3 IMAGING SCIENCE & PHOTOGRAPHIC TECHNOLOGY
Md Rejaul Karim, Shahriar Ahmed, Md Nasim Reza, Kyu-Ho Lee, Joonjea Sung, Sun-Ok Chung
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引用次数: 0

Abstract

The geometric feature characterization of fruit trees plays a role in effective management in orchards. LiDAR (light detection and ranging) technology for object detection enables the rapid and precise evaluation of geometric features. This study aimed to quantify the height, canopy volume, tree spacing, and row spacing in an apple orchard using a three-dimensional (3D) LiDAR sensor. A LiDAR sensor was used to collect 3D point cloud data from the apple orchard. Six samples of apple trees, representing a variety of shapes and sizes, were selected for data collection and validation. Commercial software and the python programming language were utilized to process the collected data. The data processing steps involved data conversion, radius outlier removal, voxel grid downsampling, denoising through filtering and erroneous points, segmentation of the region of interest (ROI), clustering using the density-based spatial clustering (DBSCAN) algorithm, data transformation, and the removal of ground points. Accuracy was assessed by comparing the estimated outputs from the point cloud with the corresponding measured values. The sensor-estimated and measured tree heights were 3.05 ± 0.34 m and 3.13 ± 0.33 m, respectively, with a mean absolute error (MAE) of 0.08 m, a root mean squared error (RMSE) of 0.09 m, a linear coefficient of determination (r2) of 0.98, a confidence interval (CI) of -0.14 to -0.02 m, and a high concordance correlation coefficient (CCC) of 0.96, indicating strong agreement and high accuracy. The sensor-estimated and measured canopy volumes were 13.76 ± 2.46 m3 and 14.09 ± 2.10 m3, respectively, with an MAE of 0.57 m3, an RMSE of 0.61 m3, an r2 value of 0.97, and a CI of -0.92 to 0.26, demonstrating high precision. For tree and row spacing, the sensor-estimated distances and measured distances were 3.04 ± 0.17 and 3.18 ± 0.24 m, and 3.35 ± 0.08 and 3.40 ± 0.05 m, respectively, with RMSE and r2 values of 0.12 m and 0.92 for tree spacing, and 0.07 m and 0.94 for row spacing, respectively. The MAE and CI values were 0.09 m, 0.05 m, and -0.18 for tree spacing and 0.01, -0.1, and 0.002 for row spacing, respectively. Although minor differences were observed, the sensor estimates were efficient, though specific measurements require further refinement. The results are based on a limited dataset of six measured values, providing initial insights into geometric feature characterization performance. However, a larger dataset would offer a more reliable accuracy assessment. The small sample size (six apple trees) limits the generalizability of the findings and necessitates caution in interpreting the results. Future studies should incorporate a broader and more diverse dataset to validate and refine the characterization, enhancing management practices in apple orchards.

果树的几何特征描述对果园的有效管理起着重要作用。用于物体探测的激光雷达(光探测与测距)技术能够快速、精确地评估几何特征。本研究旨在使用三维 (3D) 激光雷达传感器量化苹果园的高度、树冠体积、树间距和行距。研究人员使用激光雷达传感器收集苹果园的三维点云数据。我们选择了六个苹果树样本(代表各种形状和大小)进行数据收集和验证。利用商业软件和 python 编程语言处理收集到的数据。数据处理步骤包括数据转换、去除半径离群点、体素网格下采样、通过过滤和错误点进行去噪、分割感兴趣区域(ROI)、使用基于密度的空间聚类(DBSCAN)算法进行聚类、数据转换和去除地面点。通过比较点云的估计输出和相应的测量值来评估精确度。传感器估计的树高和测量的树高分别为 3.05 ± 0.34 米和 3.13 ± 0.33 米,平均绝对误差 (MAE) 为 0.08 米,均方根误差 (RMSE) 为 0.09 米,线性判定系数 (r2) 为 0.98,置信区间 (CI) 为 -0.14 至 -0.02 米,一致性相关系数 (CCC) 为 0.96,表明两者高度一致且准确度很高。传感器估计和测量的树冠体积分别为 13.76 ± 2.46 立方米和 14.09 ± 2.10 立方米,MAE 为 0.57 立方米,RMSE 为 0.61 立方米,r2 为 0.97,CI 为 -0.92 至 0.26,表明精度高。在树距和行距方面,传感器估计距离和测量距离分别为 3.04 ± 0.17 米和 3.18 ± 0.24 米,以及 3.35 ± 0.08 米和 3.40 ± 0.05 米,树距的 RMSE 值和 r2 值分别为 0.12 米和 0.92,行距的 RMSE 值和 r2 值分别为 0.07 米和 0.94。树距的 MAE 值和 CI 值分别为 0.09 米、0.05 米和 -0.18,行距的 MAE 值和 CI 值分别为 0.01 米、-0.1 米和 0.002。虽然观察到的差异很小,但传感器的估算结果是有效的,不过具体的测量结果还需要进一步完善。这些结果基于六个测量值的有限数据集,提供了几何特征描述性能的初步见解。然而,更大的数据集将提供更可靠的精度评估。样本量较小(六棵苹果树)限制了研究结果的普遍性,因此在解释结果时必须谨慎。未来的研究应纳入更广泛、更多样的数据集,以验证和完善特征描述,加强苹果园的管理实践。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Imaging
Journal of Imaging Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
5.90
自引率
6.20%
发文量
303
审稿时长
7 weeks
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