{"title":"Design of Machine Learning for Limes Classification Based Upon Thai Agricultural Standard No. TAS 27-2017","authors":"A. Kengpol, Alongkorn Klaiklueng","doi":"10.14416/j.asep.2024.01.005","DOIUrl":null,"url":null,"abstract":"Accurately classifying the limes quality of limes according to established standards is paramount for instilling trust in farmers' trading of agricultural produce. Historically, machinery has been employed to categorize the lime quality, with dual objectives of cost reduction and error mitigation, thereby facilitating the classifying process. Nevertheless, deploying such machinery to classify limes in their fresh produce form, intended for consumer sale, has encountered limitations imposed by the stringent criteria stipulated in Thai Agricultural Standards No. TAS 27-2017, a standard derived from the Codex Standard and widely adopted by numerous countries. Considering these constraints, the presented research aims to enhance the efficiency of limes classification, adhering to the standards. The Machine Learning System is designed to recognize and categorize limes based upon their skin color and defects to achieve this goal. This system employed convolutional neural network (CNN) models in conjunction with logistic regression equations, which are unavailable in the literature. The research findings indicate that this system is proficient in accurately presenting lime images and their corresponding quality classes via a Graphical User Interface on a computer screen, achieving an accuracy rate exceeding 90%. The implications of this research extend to the agricultural sector by augmenting the efficacy of Machine Learning for classifying limes in compliance with Thai Agricultural Standard No. TAS 27-2017. Furthermore, the methodology developed in this study can find applicability in classifying other agricultural products.","PeriodicalId":8097,"journal":{"name":"Applied Science and Engineering Progress","volume":"46 34","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-01-26","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Applied Science and Engineering Progress","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.14416/j.asep.2024.01.005","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q2","JCRName":"Engineering","Score":null,"Total":0}
引用次数: 0
Abstract
Accurately classifying the limes quality of limes according to established standards is paramount for instilling trust in farmers' trading of agricultural produce. Historically, machinery has been employed to categorize the lime quality, with dual objectives of cost reduction and error mitigation, thereby facilitating the classifying process. Nevertheless, deploying such machinery to classify limes in their fresh produce form, intended for consumer sale, has encountered limitations imposed by the stringent criteria stipulated in Thai Agricultural Standards No. TAS 27-2017, a standard derived from the Codex Standard and widely adopted by numerous countries. Considering these constraints, the presented research aims to enhance the efficiency of limes classification, adhering to the standards. The Machine Learning System is designed to recognize and categorize limes based upon their skin color and defects to achieve this goal. This system employed convolutional neural network (CNN) models in conjunction with logistic regression equations, which are unavailable in the literature. The research findings indicate that this system is proficient in accurately presenting lime images and their corresponding quality classes via a Graphical User Interface on a computer screen, achieving an accuracy rate exceeding 90%. The implications of this research extend to the agricultural sector by augmenting the efficacy of Machine Learning for classifying limes in compliance with Thai Agricultural Standard No. TAS 27-2017. Furthermore, the methodology developed in this study can find applicability in classifying other agricultural products.
按照既定标准对石灰的质量进行准确分类,对于建立农民对农产品交易的信任至关重要。从历史上看,人们一直使用机械对酸橙质量进行分类,以达到降低成本和减少误差的双重目的,从而促进分类过程。然而,使用这种机械对供消费者销售的新鲜酸橙进行分类,却遇到了泰国农业标准第 TAS 27-2017 号规定的严格标准所带来的限制,该标准源自食品法典标准,被许多国家广泛采用。考虑到这些限制因素,本研究旨在根据标准提高酸橙分类的效率。为实现这一目标,设计了机器学习系统,根据青柠檬的肤色和缺陷对其进行识别和分类。该系统采用了卷积神经网络(CNN)模型和逻辑回归方程,这在文献中是没有的。研究结果表明,该系统能够通过计算机屏幕上的图形用户界面准确呈现石灰图像及其相应的质量等级,准确率超过 90%。这项研究的意义延伸到了农业领域,它增强了机器学习在按照泰国农业标准第 TAS 27-2017 号对石灰进行分类方面的功效。此外,本研究开发的方法还适用于其他农产品的分类。