The First Study of White Rust Disease Recognition by Using Deep Neural Networks and Raspberry Pi Module Application in Chrysanthemum

IF 2.1 Q2 ENGINEERING, MULTIDISCIPLINARY Inventions Pub Date : 2023-05-31 DOI:10.3390/inventions8030076
T. Nguyen, L. Dang, Truong-Dong Do, J. Lim
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Abstract

Growth factors affect farm owners, environmental conditions, nutrient adaptation, and resistance to chrysanthemum diseases. Healthy chrysanthemum plants can overcome all these factors and provide farms owners with a lot of income. Chrysanthemum white rust disease is a common disease that occurs worldwide; if not treated promptly, the disease spreads to the entire leaf surface, causing the plant’s leaves to burn, turn yellow, and fall prematurely, reducing the photosynthetic performance of the plant and the appearance of the flower branches. In Korea, chrysanthemum white rust disease most often occurs during the spring and autumn seasons, when temperature varies during the summer monsoon, and when ventilation is poor in the winter. Deep neural networks were used to determine healthy and unhealthy plants. We applied the Raspberry Pi 3 module to recognize white rust and test four neural network models. The five main deep neural network processes utilized for a dataset of non-diseased and white rust leaves include: (1) data collection; (2) data partitioning; (3) feature extraction; (4) feature engineering; and (5) prediction modeling based on the train–test loss of 35 epochs within 20 min using Linux. White rust recognition is performed for comparison using four models, namely, DenseNet121, ResNet50, VGG-19, and MobileNet v2. The qualitative white rust detection system is achieved using a Raspberry Pi 3 module. All models accomplished an accuracy of over 94%, and MobileNet v2 achieved the highest accuracy, precision, and recall at over 98%. In the precision comparison, DenseNet121 obtained the second highest recognition accuracy of 97%, whereas ResNet50 and VGG-19 achieved slightly lower accuracies at 95% and 94%, respectively. Qualitative results were obtained using the Raspberry Pi 3 module to assess the performance of the four models. All models had accuracies of over 91%, with ResNet50 obtaining a value of 91%, VGG19 reaching a value of 93%, and DenseNet121 reaching 95%. The highest accuracy rate was 97% (MobileNet v2). MobileNet v2 was validated as the most effective model to recognize white rust in chrysanthemums using the Raspberry Pi 3 system. Raspberry Pi 3 module was considered, in conjunction with the MobileNet v2 model, to be the best application system. MobileNet v2 and Raspberry Pi require a low cost for the recognition of chrysanthemum white rust and the diagnosis of chrysanthemum plant health conditions, reducing the risk of white rust disease and minimizing costs and efforts while improving floral production. Chrysanthemum farmers should consider applying the Raspberry Pi module for detecting white rust, protecting healthy plant growth, and increasing yields with low-cost.
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利用深度神经网络识别白锈病的初步研究及树莓派模块在菊花中的应用
生长因子影响农场主人、环境条件、营养适应和对菊花疾病的抵抗力。健康的菊花植物可以克服所有这些因素,为农场所有者提供大量收入。菊花白锈病是世界范围内常见的病害;如果不及时处理,疾病会蔓延到整个叶片表面,导致植物的叶子燃烧、变黄和过早掉落,降低植物的光合性能和花枝的外观。在韩国,菊花白锈病最常见于春秋季节,夏季风期间温度变化,冬季通风不良。深度神经网络被用于确定健康和不健康的植物。我们应用树莓派3模块识别白锈,并测试了四个神经网络模型。用于无病叶和白锈叶数据集的五个主要深度神经网络过程包括:(1)数据收集;(2) 数据分区;(3) 特征提取;(4) 特征工程;以及(5)使用Linux基于20分钟内35个时期的列车测试损失的预测建模。白锈识别使用四个模型进行比较,即DenseNet121、ResNet50、VGG-19和MobileNet v2。定性白锈检测系统是使用树莓派3模块实现的。所有模型的准确率均超过94%,MobileNet v2的准确率、准确度和召回率最高,超过98%。在精度比较中,DenseNet121获得了97%的第二高识别准确率,而ResNet50和VGG-19分别获得了略低的准确率,分别为95%和94%。使用树莓派3模块获得定性结果,以评估四个模型的性能。所有模型的准确率均超过91%,其中ResNet50获得91%的值,VGG19达到93%的值,DenseNet121达到95%。最高准确率为97%(MobileNet v2)。MobileNet v2被验证为使用树莓派3系统识别菊花白锈的最有效模型。Raspberry Pi 3模块与MobileNet v2模型一起被认为是最好的应用系统。MobileNet v2和Raspberry Pi需要低成本来识别菊花白锈病和诊断菊花植物健康状况,从而降低白锈病的风险,并在改善花卉生产的同时最大限度地减少成本和工作量。菊花种植者应该考虑应用树莓派模块来检测白锈,保护植物健康生长,并以低成本提高产量。
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来源期刊
Inventions
Inventions Engineering-Engineering (all)
CiteScore
4.80
自引率
11.80%
发文量
91
审稿时长
12 weeks
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