College of Biosystems Engineering and Food Science, Zhejiang University, Hangzhou 310058, China.
Key Laboratory of Spectroscopy Sensing, Ministry of Agriculture and Rural Affairs, Hangzhou 310058, China.
Sensors (Basel). 2021 Jan 19;21(2):664. doi: 10.3390/s21020664.
Three-dimensional (3D) structure is an important morphological trait of plants for describing their growth and biotic/abiotic stress responses. Various methods have been developed for obtaining 3D plant data, but the data quality and equipment costs are the main factors limiting their development. Here, we propose a method to improve the quality of 3D plant data using the time-of-flight (TOF) camera Kinect V2. A K-dimension (k-d) tree was applied to spatial topological relationships for searching points. Background noise points were then removed with a minimum oriented bounding box (MOBB) with a pass-through filter, while outliers and flying pixel points were removed based on viewpoints and surface normals. After being smoothed with the bilateral filter, the 3D plant data were registered and meshed. We adjusted the mesh patches to eliminate layered points. The results showed that the patches were closer. The average distance between the patches was 1.88 × 10 m, and the average angle was 17.64°, which were 54.97% and 48.33% of those values before optimization. The proposed method performed better in reducing noise and the local layered-points phenomenon, and it could help to more accurately determine 3D structure parameters from point clouds and mesh models.
三维(3D)结构是描述植物生长和生物/非生物胁迫响应的重要形态特征。已经开发了各种获取 3D 植物数据的方法,但数据质量和设备成本是限制其发展的主要因素。在这里,我们提出了一种使用飞行时间(TOF)相机 Kinect V2 来提高 3D 植物数据质量的方法。K-维(k-d)树用于搜索点的空间拓扑关系。然后,使用具有直通滤波器的最小定向包围盒(MOBB)去除背景噪声点,同时根据视点和表面法线去除异常值和飞像素点。用双边滤波器平滑后,对 3D 植物数据进行配准和网格化。我们调整了网格补丁以消除分层点。结果表明,补丁之间的距离更近。补丁之间的平均距离为 1.88×10^-3 m,平均角度为 17.64°,分别为优化前的 54.97%和 48.33%。该方法在减少噪声和局部分层点现象方面表现更好,有助于更准确地从点云和网格模型中确定 3D 结构参数。