A real time monitoring system for accurate plant leaves disease detection using deep learning

Kazi Naimur Rahman, Sajal Chandra Banik, Raihan Islam, Arafath Al Fahim
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Abstract

Accurate and timely detection of plant diseases is crucial for sustainable agriculture and food security. This research presents a real-time monitoring system utilizing deep learning techniques to detect diseases in plant leaves with high accuracy. We combined several plant datasets, including the PlantVillage Dataset, resulting in a comprehensive dataset of 30,945 images across eight plant types (potato, tomato, pepper bell, apple, corn, grape, peach, and rice) and 35 disease classes. Initially, a custom Convolutional Neural Network (CNN) model was developed, achieving a leaf classification accuracy of 95.62 ​%. Subsequently, the dataset was partitioned for individual plant disease detection, applying nine different CNN models (custom CNN, VGG16, VGG19, InceptionV3, MobileNet, DenseNet121, Xception, and two hybrid models) to each plant type. The highest accuracy rates for disease detection were: 100 ​% for potato (custom CNN), 98 ​% for tomato (InceptionV3, custom CNN, VGG16), 100 ​% for pepper bell (MobileNet, custom CNN), 100 ​% for apple (MobileNet, Xception), 98 ​% for corn (custom CNN), 99 ​% for grape (custom CNN, VGG19, DenseNet121), 100 ​% for peach (VGG16, custom CNN), and 98 ​% for rice (DenseNet121). A web and mobile application were developed based on the best-performing models, allowing users to insert or capture images of plant leaves, detect diseases, and receive treatment suggestions with high confidence levels. The results demonstrate the effectiveness of deep learning models in accurately identifying plant diseases, offering a valuable tool for enhancing disease management and crop yields.
一种利用深度学习技术精确检测植物叶片疾病的实时监测系统
准确和及时发现植物病害对可持续农业和粮食安全至关重要。本研究提出了一种利用深度学习技术对植物叶片病害进行高精度检测的实时监测系统。我们结合了几个植物数据集,包括PlantVillage数据集,得到了一个包含8种植物类型(马铃薯、番茄、辣椒、苹果、玉米、葡萄、桃子和水稻)和35种疾病类别的30,945张图像的综合数据集。首先,开发了自定义卷积神经网络(CNN)模型,实现了95.62%的叶子分类准确率。随后,数据集被划分为单株病害检测,对每种植物类型应用9种不同的CNN模型(自定义CNN、VGG16、VGG19、InceptionV3、MobileNet、DenseNet121、Xception和两种混合模型)。疾病检测的最高准确率为:马铃薯100%(定制CNN),番茄98% (InceptionV3,定制CNN, VGG16),辣椒100% (MobileNet,定制CNN),苹果100% (MobileNet, Xception),玉米98%(定制CNN),葡萄99%(定制CNN, VGG19, DenseNet121),桃子100% (VGG16,定制CNN),大米98% (DenseNet121)。基于性能最好的模型开发了一个网络和移动应用程序,允许用户插入或捕获植物叶片的图像,检测疾病,并以高可信度接收治疗建议。研究结果证明了深度学习模型在准确识别植物病害方面的有效性,为加强病害管理和作物产量提供了有价值的工具。
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