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Development of a Mobile Robotic Phenotyping System for Growth Chamber-based Studies of Genotype x Environment Interactions

机译:基于生长腔基因型X环境相互作用的增长腔室研究的发展

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To increase understanding of the interaction between phenotype and genotype x environment to improve crop performance, large amounts of phenotypic data are needed. Studying plants of a given strain under multiple environments can greatly help to reveal their interactions. To collect the labor-intensive data required to perform experiments in this area, a Mecanum-wheeled, magnetic-tape-following indoor rover has been developed to accurately and autonomously move between and inside growth chambers. Integration of the motor controllers, a robot arm, and a Microsoft Kinect (v2) 3D sensor was achieved in a customized C++ program. Detecting and segmenting plants in a multi-plant environment is a challenging task, which can be aided by integration of depth data into these algorithms. Image-processing functions were implemented to filter the depth image to minimize noise and remove undesired surfaces, reducing the memory requirement and allowing the plant to be reconstructed at a higher resolution in real-time. Three-dimensional meshes representing plants inside the chamber were reconstructed using the Kinect SDK's KinectFusion. After transforming user-selected points in camera coordinates to robot-arm coordinates, the robot arm is used in conjunction with the rover to probe desired leaves, simulating the future use of sensors such as a fluorimeter and Raman spectrometer. This paper reports the system architecture and some preliminary results of the system.
机译:为了提高了解表型和基因型X环境之间的相互作用,以改善作物性能,需要大量的表型数据。在多种环境下的给定应变的植物可以有助于揭示他们的相互作用。为了收集在该地区执行实验所需的劳动密集型数据,已经开发了一种麦片轮,轮式磁带之后的室内流动站,以准确地自主地在生长室之间和内部之间移动。在自定义的C ++程序中实现了电机控制器,机器人臂和Microsoft Kinect(V2)3D传感器的集成。多工厂环境中的检测和分段植物是一个具有挑战性的任务,可以通过将深度数据集成到这些算法中来辅助。实现了图像处理功能以过滤深度图像以最小化噪声并删除不期望的表面,降低存储器要求并允许工厂实时以更高的分辨率重建。使用Kinect SDK的KinectFument重建代表腔室内植物的三维网格。在将相机中的用户选择的点转换为机器人臂坐标后,机器人臂与流动仪一起使用以探测所需的叶子,模拟了未来使用传感器,例如荧光计和拉曼光谱仪。本文报告了系统架构和系统的一些初步结果。

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