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Measuring plant growth characteristics using smartphone based image analysis technique in controlled environment agriculture

机译:基于智能手机的图像分析技术测量植物生长特性在受控环境农业中

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High plant number per unit area makes it challenging to monitor plant growth in controlled environment agriculture (CEA) systems. Our objective was to develop and validate image analysis technique that uses a smartphone connected to local desktop computer for non-destructive measurement of growth characteristics of several species commonly grown in CEA. Using mobile apps, an iPhone-6 was remotely connected to a local computer containing image-processing software (MATLAB) and script. Smartphone was used to capture images of plants belonging to several species including basil, leaf lettuce, tomato, and zinnia. The images were moved to a folder on cloud storage and remotely processed on a local computer to derive estimated leaf area (LA(estimated)) of plants. Regression analysis indicated a near perfect linear relation between measured leaf area (LA(estimated)) and LA(estimated) (r(2) = 0.98) and shoot dry weight (SDW) and LA(estimated) (r(2) = 0.94) when data were pooled from all species. No significant differences were observed when relative growth rate (RGR) was measured using either SDW or LA(estimated) values. Further, results indicated that real-time and non-invasive LA(estimated) measurements can be used to track plant growth differences over time. This method was able to identify plant growth differences more accurately than visual assessments on plants. Our findings indicate that LA(estimated) can be used for accurate and non-invasive measurement of growth characteristics of plants in academic research. The technique can also aid in maximizing productivity, minimizing resource wastage and harvesting crops timely in commercial production.
机译:每单位区域的高植物数量使其挑战监测受控环境农业(CEA)系统的植物生长。我们的目标是开发和验证使用连接到本地台式计算机的智能手机的图像分析技术,以进行无损测量CEA通常种植的几种种类的生长特性。使用移动应用程序,iPhone-6远程连接到包含图像处理软件(MATLAB)和脚本的本地计算机。智能手机用于捕获属于几种物种的植物的图像,包括罗勒,叶莴苣,番茄和百日菊属。将图像移动到云存储器的文件夹,并在本地计算机上远程处理,以导出植物的估计叶面积(La(估计))。回归分析表明了测量的叶片区域(La(估计))和La(估计)(R(2)= 0.98)之间的近乎完美的线性关系,并芽干重(SDW)和La(估计)(R(2)= 0.94 )从所有物种中汇集数据时。当使用SDW或LA(估计)值测量相对生长速率(RGR)时,不会观察到显着差异。此外,结果表明,实时和非侵入性La(估计)测量可随时间追踪植物生长差异。该方法能够比植物的视觉评估更准确地识别植物生长差异。我们的研究结果表明,LA(估计)可用于学术研究中植物生长特性的准确和非侵入性测量。该技术还可以帮助最大化生产率,最大限度地减少资源浪费和在商业生产中及时收获庄稼。

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