Department of Biological System Engineering, Washington State University, Pullman, WA 99164, USA.
Laboratory of Biotechnology, AMG, IDR-IAPAR-EMATER-Agronomic Institute of Paraná, Londrina-PR 86001-970, Brazil.
Sensors (Basel). 2022 Jun 18;22(12):4619. doi: 10.3390/s22124619.
Fruit industries play a significant role in many aspects of global food security. They provide recognized vitamins, antioxidants, and other nutritional supplements packed in fresh fruits and other processed commodities such as juices, jams, pies, and other products. However, many fruit crops including peaches ( (L.) Batsch) are perennial trees requiring dedicated orchard management. The architectural and morphological traits of peach trees, notably tree height, canopy area, and canopy crown volume, help to determine yield potential and precise orchard management. Thus, the use of unmanned aerial vehicles (UAVs) coupled with RGB sensors can play an important role in the high-throughput acquisition of data for evaluating architectural traits. One of the main factors that define data quality are sensor imaging angles, which are important for extracting architectural characteristics from the trees. In this study, the goal was to optimize the sensor imaging angles to extract the precise architectural trait information by evaluating the integration of nadir and oblique images. A UAV integrated with an RGB imaging sensor at three different angles (90°, 65°, and 45°) and a 3D light detection and ranging (LiDAR) system was used to acquire images of peach trees located at the Washington State University's Tukey Horticultural Orchard, Pullman, WA, USA. A total of four approaches, comprising the use of 2D data (from UAV) and 3D point cloud (from UAV and LiDAR), were utilized to segment and measure the individual tree height and canopy crown volume. Overall, the features extracted from the images acquired at 45° and integrated nadir and oblique images showed a strong correlation with the ground reference tree height data, while the latter was highly correlated with canopy crown volume. Thus, selection of the sensor angle during UAV flight is critical for improving the accuracy of extracting architectural traits and may be useful for further precision orchard management.
水果产业在全球食品安全的许多方面都发挥着重要作用。它们提供了公认的维生素、抗氧化剂和其他营养补充剂,这些营养物质都被封装在新鲜水果和其他加工产品中,如果汁、果酱、馅饼和其他产品中。然而,包括桃子((L.) Batsch)在内的许多水果作物都是需要专门果园管理的多年生树木。桃树的结构和形态特征,特别是树高、冠层面积和冠层体积,有助于确定产量潜力和精确的果园管理。因此,使用无人机 (UAV) 结合 RGB 传感器可以在高通量获取数据以评估结构特征方面发挥重要作用。定义数据质量的主要因素之一是传感器成像角度,这对于从树木中提取结构特征很重要。在这项研究中,目标是通过评估垂直和倾斜图像的集成来优化传感器成像角度,以提取精确的结构特征信息。一架集成了 RGB 成像传感器的无人机,在三个不同的角度(90°、65°和 45°)和一个 3D 光探测和测距 (LiDAR) 系统,用于获取位于美国华盛顿州立大学 Tukey 园艺果园的桃树图像,位于美国华盛顿州普尔曼。总共使用了四种方法,包括使用 2D 数据(来自 UAV)和 3D 点云(来自 UAV 和 LiDAR)来分割和测量单个树高和冠层体积。总体而言,从 45°采集的图像中提取的特征与地面参考树高数据具有很强的相关性,而后者与冠层体积高度相关。因此,在无人机飞行过程中选择传感器角度对于提高提取结构特征的准确性至关重要,并且可能有助于进一步的精确果园管理。