KaleCare: Smart Farm for Kale with Pests Detection System using Machine Learning

Natthaphon Tachai, Perapat Yato, Teerachai Muangpan, Krittakom Srijiranon, Narissara Eiamkanitchat
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引用次数: 1

Abstract

Kale is a popular ingredient in Thai cuisine and can be grown year-round. However, kale requires particular care, especially pests. Therefore, this study applies the Internet of Things to propose the KaleCare, a smart farm management system for kale with four main functions including automatic watering based on weather forecasting, automatic fertilizing, reporting, and pest detection for cutworms, and aphids. There are three processes to create the pest classification models for pest detection function. Firstly, the raw images were applied to the GrabCut to remove the background. Secondly, data augmentation was applied to generate images due to the small amount of raw data. Finally, the modified GoogLeNet reduced the original GoogLeNet structure is proposed to classify both types of pests. The experimental results show that the proposed model outperforms with 0.8903 and 0.7959 in average classification rate and 0.886 and 0.7965 in average F1-score to classify cutworm and aphid, respectively.
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KaleCare:使用机器学习的甘蓝害虫检测系统的智能农场
羽衣甘蓝是泰国菜中很受欢迎的食材,全年都可以种植。然而,羽衣甘蓝需要特别照顾,尤其是害虫。因此,本研究运用物联网技术,提出了羽衣甘蓝智能农场管理系统KaleCare,该系统具有基于天气预报的自动浇水、自动施肥、自动报告、毛虫和蚜虫害虫检测等四大功能。创建害虫检测功能的害虫分类模型有三个过程。首先,将原始图像应用于GrabCut,去除背景;其次,由于原始数据较少,采用数据增强方法生成图像。最后,对原有的GoogLeNet结构进行了简化,提出了改进的GoogLeNet结构对两类害虫进行分类。实验结果表明,该模型对线虫和蚜虫的平均分类率分别为0.8903和0.7959,平均f1评分分别为0.886和0.7965。
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