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Three-Dimensional Point Cloud Reconstruction and Morphology Measurement Method for Greenhouse Plants Based on the Kinect Sensor Self-Calibration

机译:基于Kinect传感器自校准的温室植物三维点云重建与形态测量方法

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Plant morphological data are an important basis for precision agriculture and plant phenomics. The three-dimensional (3D) geometric shape of plants is complex, and the 3D morphology of a plant changes relatively significantly during the full growth cycle. In order to make high-throughput measurements of the 3D morphological data of greenhouse plants, it is necessary to frequently adjust the relative position between the sensor and the plant. Therefore, it is necessary to frequently adjust the Kinect sensor position and consequently recalibrate the Kinect sensor during the full growth cycle of the plant, which significantly increases the tedium of the multiview 3D point cloud reconstruction process. A high-throughput 3D rapid greenhouse plant point cloud reconstruction method based on autonomous Kinect v2 sensor position calibration is proposed for 3D phenotyping greenhouse plants. Two red–green–blue–depth (RGB-D) images of the turntable surface are acquired by the Kinect v2 sensor. The central point and normal vector of the axis of rotation of the turntable are calculated automatically. The coordinate systems of RGB-D images captured at various view angles are unified based on the central point and normal vector of the axis of the turntable to achieve coarse registration. Then, the iterative closest point algorithm is used to perform multiview point cloud precise registration, thereby achieving rapid 3D point cloud reconstruction of the greenhouse plant. The greenhouse tomato plants were selected as measurement objects in this study. Research results show that the proposed 3D point cloud reconstruction method was highly accurate and stable in performance, and can be used to reconstruct 3D point clouds for high-throughput plant phenotyping analysis and to extract the morphological parameters of plants.
机译:植物形态数据是精密农业和植物表达的重要依据。植物的三维(3D)几何形状是复杂的,并且在完全生长期期间植物的3D形态变化相对显着。为了使温室植物的3D形态数据进行高通量测量,有必要经常调整传感器和工厂之间的相对位置。因此,有必要经常调整Kinect传感器位置,从而在植物的完整生长周期期间重新校准Kinect传感器,这显着增加了多视图3D点云重建过程的促员。基于自主Kinect V2传感器位置校准的高吞吐量3D快速温室植物点云重建方法,3D表型温室植物。通过Kinect V2传感器获取转盘表面的两个红色绿色深度(RGB-D)图像。转盘的旋转轴的中心点和正常矢量自动计算。基于转盘的轴的轴线的中心点和正常矢量统一以各种视角捕获的RGB-D图像的坐标系,以实现粗略配准。然后,迭代最接近点算法用于执行多视图点云精确注册,从而实现温室植物的快速3D点云重建。温室番茄植物被选为本研究中的测量对象。研究结果表明,建议的3D点云重建方法在性能方面具有高度准确和稳定,可用于重建3D点云进行高通量植物表型分析,提取植物的形态参数。

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