Detecting Palm Oil Deficiencies: A Study of Boron, Nitrogen, Potassium, And Magnesium Deficiencies Using Yolov5 Model

Rusdi Efendi, Nurul Laila Tusya’diah, Ruvita Faurina
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Abstract

Since palm oil plants are extremely hungry for nutrients, this will affect their growth and production. In this research, the YOLOv5 model was utilized as the primary analysis and data interpretation tool. This research aimed to develop an Android-based application to identify plant deficiency issues in the palm oil industry. The deficiencies examined were boron, potassium, magnesium, and nitrogen from the dataset of 2,789 palm oil leaf image samples acquired for training and analysis. At two different Intersection Over Union (IoU) thresholds of 0.5 and 0.75, the model training results demonstrated high precision, recall, and mean average precision (mAP) levels. The IoU assessment results for values of 0.5 were: boron (0.989), potassium (0.577), magnesium (0.968), nitrogen (0.96), and the healthy class (0.995). At an IoU value of 0.75, the obtained results were: boron (0.991), potassium (0.564), magnesium (0.968), nitrogen (0.958), and healthy (0.995).
检测棕榈油缺乏症:利用 Yolov5 模型对硼、氮、钾和镁缺乏症的研究
由于棕榈油植物对养分极为渴求,这将影响其生长和产量。本研究利用 YOLOv5 模型作为主要分析和数据解读工具。本研究旨在开发一款基于安卓系统的应用程序,用于识别棕榈油行业中的植物缺素问题。从用于训练和分析的 2,789 个棕榈油叶片图像样本数据集中,研究了硼、钾、镁和氮的缺乏问题。在 0.5 和 0.75 两种不同的交叉联合(IoU)阈值下,模型训练结果显示出较高的精确度、召回率和平均精确度(mAP)水平。IoU 值为 0.5 时的评估结果为:硼(0.989)、钾(0.577)、镁(0.968)、氮(0.96)和健康类(0.995)。当 IoU 值为 0.75 时,结果为:硼(0.991)、钾(0.564)、镁(0.968)、氮(0.958)和健康(0.995)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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