Application of MobileNets Convolutional Neural Network Model in Detecting Tomato Late Blight Disease

Richard C Rajabu, J. Ally, Jamal Banzi
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Abstract

Late blight (LB) disease causes significant annual losses in tomato production. Early identification of this disease is crucial in halting its severity. This study aimed to leverage the strength of Convolutional Neural Networks (CNNs) in automated prediction of tomato LB. Through transfer learning, the MobileNetV3 model was trained on high-quality, well-labeled images from Kaggle datasets. The trained model was tested on different images of healthy and infected leaves taken from different real-world locations in Mbeya, Arusha, and Morogoro. Test results demonstrated the model's success in identifying LB disease, with an accuracy of 81% and a precision of 76%. The trained model has the potential to be integrated into an offline mobile app for real-time use, improving the efficiency and effectiveness of LB disease detection in tomato production. Similar methods could also be applied to detect other tomato infections. Keywords:  MobileNets; convolutional neural networks; plant diseases detection; image classification; transfer learning
MobileNets卷积神经网络模型在番茄晚疫病检测中的应用
晚疫病(LB)对番茄生产造成重大的年度损失。及早发现这种疾病对于遏制其严重程度至关重要。本研究旨在利用卷积神经网络(cnn)在番茄LB自动预测中的优势。通过迁移学习,MobileNetV3模型在来自Kaggle数据集的高质量、标记良好的图像上进行训练。训练后的模型在姆贝亚、阿鲁沙和莫罗戈罗的不同真实世界地点拍摄的健康和感染树叶的不同图像上进行了测试。测试结果表明,该模型在识别LB疾病方面取得了成功,准确率为81%,精确度为76%。经过训练的模型有可能集成到离线移动应用程序中进行实时使用,从而提高番茄生产中LB疾病检测的效率和有效性。类似的方法也可以用于检测其他番茄感染。关键词:MobileNets;卷积神经网络;植物病害检测;图像分类;转移学习
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