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Leaf-Movement-Based Growth Prediction Model Using Optical Flow Analysis and Machine Learning in Plant Factory

机译:基于光流分析和机器学习的植物工厂基于叶运动的生长预测模型

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摘要

Productivity stabilization is a critical issue facing plant factories. As such, researchers have been investigating growth prediction with the overall goal of improving productivity. The projected area of a plant (PA) is usually used for growth prediction, by which the growth of a plant is estimated by observing the overall approximate movement of the plant. To overcome this problem, this study focused on the time-series movement of plant leaves, using optical flow (OF) analysis to acquire this information for a lettuce. OF analysis is an image processing method that extracts the difference between two consecutive frames caused by the movement of the subject. Experiments were carried out at a commercial large-scale plant factory. By using a microcomputer with a camera module placed above the lettuce seedlings, images of 338 seedlings were taken every 20 min over 9 days (from the 6th to the 15th day after sowing). Then, the features of the leaf movement were extracted from the image by calculating the normal-vector in the OF analysis, and these features were applied to machine learning to predict the fresh weight of the lettuce at harvest time (38 days after sowing). The growth prediction model using the features extracted from the OF analysis was found to perform well with a correlation ratio of 0.743. Furthermore, this study also considered a phenotyping system that was capable of automatically analyzing a plant image, which would allow this growth prediction model to be widely used in commercial plant factories.
机译:生产率稳定是工厂工厂面临的关键问题。因此,研究人员一直在研究增长预测,其总体目标是提高生产力。通常将植物的投影面积(PA)用于生长预测,通过观察植物的总体大致运动来估计植物的生长。为了克服这个问题,本研究着重于植物叶片的时间序列运动,使用光流(OF)分析来获取莴苣的信息。 OF分析是一种图像处理方法,可提取由对象的运动引起的两个连续帧之间的差异。实验是在一家大型商业工厂中进行的。通过使用一台带摄像头模块的微型计算机,将其置于生菜幼苗上方,在9天中(播种后第6天到第15天)每20分钟拍摄338棵幼苗的图像。然后,通过在OF分析中计算法线向量,从图像中提取叶片运动的特征,并将这些特征应用于机器学习,以预测收获时(播种后38天)生菜的鲜重。发现使用从OF分析中提取的特征的增长预测模型表现良好,相关比为0.743。此外,本研究还考虑了能够自动分析植物图像的表型系统,这将使这种生长预测模型广泛用于商业植物工厂。

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