利用机器学习分析菠菜栽培植物的受控环境

Mdas Angelo M. Araneta, Daniel V. Asenjo, Carl Jeremiah L. Lamprea, Argilyn Mae L. Reyes, Oliver A. Medina, Anna-liza F. Sigue, Marielle M. Cabal, Aldrin J. Soriano, M. G. Beaño
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引用次数: 2

摘要

将移动应用和机器学习与环境感知和图像处理设备相结合,实时监测植物的健康和生长情况。该研究的目标是通过使用图像处理和监督机器学习来监测菠菜的健康状况,从而为菠菜开发一个可控的环境。该设备通过不同的传感器收集湿度、温度和土壤状况的实时数据。菠菜健康状况的诊断是通过图像处理技术捕获菠菜的图像来完成的。两种分类器用于检测菠菜健康状况,绿色表示菠菜健康或叶片无损伤,绿色、黄色、棕色表示菠菜不健康或有孔、损伤;这个分类器也被称为数据集。菠菜的健康状况是通过一款名为菠菜监测应用程序(SPIMON)的移动应用程序监测的,所有收集到的数据都存储在云端。结果表明,菠菜的健康状况最好是在可控的环境中培养。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Controlled Environment for Spinach Cultured Plant with Health Analysis using Machine Learning
The combination of mobile application and machine learning with environmental sensing and image processing device in monitoring the health and growth of the plant in real-time. The goal of the study is to develop a controlled environment for spinach by monitoring its health condition using image processing and supervised machine learning. The device collects real-time data for humidity, temperature, and soil conditions using different sensors. Diagnosis of spinach health status is done by capturing the images of spinach using image processing techniques. Two classifiers were used in detecting spinach health conditions, Green for healthy spinach or no damages on leaves and Green, Yellow, Brown for unhealthy or with holes, damages; this classifier is also called datasets. Spinach health status is monitored using a mobile application called Spinach Monitoring Application (SPIMON) and all collected data are stored in the cloud. The result spinach health status showed that its best to culture spinach in a controlled environment.
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