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Design and implementation of a computer vision-guided greenhouse crop diagnostics system

机译:计算机视觉引导的温室作物诊断系统的设计与实现

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摘要

An autonomous computer vision-guided plant sensing and monitoring system was designed and constructed to continuously monitor temporal, morphological, and spectral features of lettuce crop growing in a nutrient film technique (NFT) hydroponics system. The system consisted of five main components including (1) a stepper motor-driven camera positioning system, (2) an image acquisition system, (3) a data logger monitoring root and aerial zone of the growing environment, (4) a dynamic SQL database module for data storage, and (5) a host computer running the collection, processing, storage, and analysis functions. Panoramic canopy images were dynamically created from the images collected by color, near-infrared (NIR) and thermal cameras. From these three images, the crop features were registered such that a single extracted crop (or a crop canopy) contained information from each layer. The extracted features were color (red-green-blue, hue-saturation-luminance, and color brightness), texture (entropy, energy, contrast, and homogeneity), Normalized Difference Vegetative Index (NDVI) (as well as other similar indices from the color and NIR channels), thermal (plant and canopy temperature), plant morphology (top projected plant and canopy area), and temporal changes of all these variables. The computer vision-guided system was able to extract these plant features and stored them into a database autonomously. This paper introduces the engineering design and system components in detail. The system's capability is illustrated with a one-day sample of the lettuce plants growing in the NFT system, presenting the temporal changes of three key crop features extracted, and identification of a stress level and locality detection as example applications.
机译:设计并构建了一个自动计算机视觉引导的植物感测和监视系统,以连续监视营养膜技术(NFT)水培系统中生菜作物生长的时间,形态和光谱特征。该系统由五个主要组件组成,其中包括:(1)步进电机驱动的摄像机定位系统;(2)图像采集系统;(3)监视生长环境的根部和空中区域的数据记录器;(4)动态SQL数据库模块用于数据存储,以及(5)运行收集,处理,存储和分析功能的主机。从彩色,近红外(NIR)和热像仪收集的图像中动态创建全景天篷图像。从这三个图像中,对农作物特征进行配准,以使单个提取的农作物(或农作物冠层)包含来自每个图层的信息。提取的特征包括颜色(红色-绿色-蓝色,色相饱和度-亮度和颜色亮度),纹理(熵,能量,对比度和均匀性),归一化植被指数(NDVI)(以及其他来自植物的相似指数)颜色和NIR通道),热量(植物和树冠温度),植物形态(预计的植物和树冠面积最高)以及所有这些变量的时间变化。计算机视觉引导系统能够提取这些植物特征并将其自动存储到数据库中。本文详细介绍了工程设计和系统组件。该系统的功能通过NFT系统中生长的莴苣植物的一天样本来说明,该样本显示了提取的三个关键农作物特征的时间变化,并举例说明了压力水平和位置检测的识别。

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