Graduate Program in Electrical Engineering and Computing, Mackenzie Presbyterian University, Rua da Consolação, 896, Prédio 30, Consolação, São Paulo 01302-907, Brazil.
Department of Computer Science, Federal University of Minas Gerais, Avenida Antônio Carlos, 6627, Prédio do ICEx, Pampulha, Belo Horizonte 31270-901, Brazil.
Sensors (Basel). 2021 Jun 15;21(12):4115. doi: 10.3390/s21124115.
Technology has been promoting a great transformation in farming. The introduction of robotics; the use of sensors in the field; and the advances in computer vision; allow new systems to be developed to assist processes, such as phenotyping, of crop's life cycle monitoring. This work presents, which we believe to be the first time, a system capable of generating 3D models of non-rigid corn plants, which can be used as a tool in the phenotyping process. The system is composed by two modules: an terrestrial acquisition module and a processing module. The terrestrial acquisition module is composed by a robot, equipped with an RGB-D camera and three sets of temperature, humidity, and luminosity sensors, that collects data in the field. The processing module conducts the non-rigid 3D plants reconstruction and merges the sensor data into these models. The work presented here also shows a novel technique for background removal in depth images, as well as efficient techniques for processing these images and the sensor data. Experiments have shown that from the models generated and the data collected, plant structural measurements can be performed accurately and the plant's environment can be mapped, allowing the plant's health to be evaluated and providing greater crop efficiency.
技术正在推动农业的巨大变革。机器人技术的引入、传感器在田间的应用以及计算机视觉的进步,使得新的系统得以开发,以协助作物生命周期监测的表型分析等过程。本工作提出了一个我们认为是首次能够生成非刚性玉米植株 3D 模型的系统,该系统可作为表型分析过程中的一个工具。该系统由两个模块组成:一个地面采集模块和一个处理模块。地面采集模块由一个机器人组成,配备了 RGB-D 相机和三组温度、湿度和光照传感器,用于在田间采集数据。处理模块对非刚性的 3D 植物进行重建,并将传感器数据合并到这些模型中。本工作还展示了一种新的深度图像背景去除技术,以及处理这些图像和传感器数据的有效技术。实验表明,从生成的模型和收集的数据中,可以准确地进行植物结构测量,并可以对植物的环境进行映射,从而评估植物的健康状况,并提高作物的效率。