An internet of things (IoT)-based optimum tea fermentation detection model using convolutional neural networks (CNNs) and majority voting techniques

IF 0.8 Q4 INSTRUMENTS & INSTRUMENTATION Journal of Sensors and Sensor Systems Pub Date : 2021-07-02 DOI:10.5194/JSSS-10-153-2021
Gibson Kimutai, Alexander Ngenzi, Said Rutabayiro Ngoga, R. Ramkat, Anna Förster
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引用次数: 4

Abstract

Abstract. Tea (Camellia sinensis) is one of the most consumed drinks across the world. Based on processing techniques, there are more than 15 000 categories of tea, but the main categories include yellow tea, Oolong tea, Illex tea, black tea, matcha tea, green tea, and sencha tea, among others. Black tea is the most popular among the categories worldwide. During black tea processing, the following stages occur: plucking, withering, cutting, tearing, curling, fermentation, drying, and sorting. Although all these stages affect the quality of the processed tea, fermentation is the most vital as it directly defines the quality. Fermentation is a time-bound process, and its optimum is currently manually detected by tea tasters monitoring colour change, smelling the tea, and tasting the tea as fermentation progresses. This paper explores the use of the internet of things (IoT), deep convolutional neural networks, and image processing with majority voting techniques in detecting the optimum fermentation of black tea. The prototype was made up of Raspberry Pi 3 models with a Pi camera to take real-time images of tea as fermentation progresses. We deployed the prototype in the Sisibo Tea Factory for training, validation, and evaluation. When the deep learner was evaluated on offline images, it had a perfect precision and accuracy of 1.0 each. The deep learner recorded the highest precision and accuracy of 0.9589 and 0.8646, respectively, when evaluated on real-time images. Additionally, the deep learner recorded an average precision and accuracy of 0.9737 and 0.8953, respectively, when a majority voting technique was applied in decision-making. From the results, it is evident that the prototype can be used to monitor the fermentation of various categories of tea that undergo fermentation, including Oolong and black tea, among others. Additionally, the prototype can also be scaled up by retraining it for use in monitoring the fermentation of other crops, including coffee and cocoa.
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基于卷积神经网络(cnn)和多数投票技术的物联网优化茶叶发酵检测模型
摘要茶是世界上消费量最大的饮料之一。根据处理技术 000种茶,但主要类别包括黄茶、乌龙茶、伊利克斯茶、红茶、抹茶、绿茶和sencha茶等。红茶是世界上最受欢迎的类别。在红茶加工过程中,会经历以下几个阶段:采摘、枯萎、切割、撕裂、卷曲、发酵、干燥和分选。尽管所有这些阶段都会影响加工茶的质量,但发酵是最重要的,因为它直接决定了质量。发酵是一个有时间限制的过程,目前它的最佳状态是由品茶师手动检测的,他们监测茶的颜色变化,闻茶,并在发酵过程中品尝茶。本文探讨了物联网(IoT)、深度卷积神经网络和图像处理与多数投票技术在检测红茶最佳发酵中的应用。原型由树莓派3模型组成,带有一台派相机,可以在发酵过程中实时拍摄茶叶图像。我们将原型部署在Sisibo茶厂进行培训、验证和评估。当在离线图像上评估深度学习器时,它的精确性和准确性分别为1.0。当在实时图像上进行评估时,深度学习器记录的最高精度和准确度分别为0.9589和0.8646。此外,当多数投票技术应用于决策时,深度学习器记录的平均精度和准确度分别为0.9737和0.8953。从结果中可以明显看出,该原型可用于监测经过发酵的各类茶的发酵,包括乌龙茶和红茶等。此外,该原型还可以通过重新培训来扩大规模,用于监测其他作物的发酵,包括咖啡和可可。
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来源期刊
Journal of Sensors and Sensor Systems
Journal of Sensors and Sensor Systems INSTRUMENTS & INSTRUMENTATION-
CiteScore
2.30
自引率
10.00%
发文量
26
审稿时长
23 weeks
期刊介绍: Journal of Sensors and Sensor Systems (JSSS) is an international open-access journal dedicated to science, application, and advancement of sensors and sensors as part of measurement systems. The emphasis is on sensor principles and phenomena, measuring systems, sensor technologies, and applications. The goal of JSSS is to provide a platform for scientists and professionals in academia – as well as for developers, engineers, and users – to discuss new developments and advancements in sensors and sensor systems.
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