Tomato Disease Classification using Fine-Tuned Convolutional Neural Network

Haseeb Younis, Muhammad Asad Arshed, Fawad Ul Hassan, M. Khurshid, Hadia Ghassan
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Abstract

Tomatoes have enhanced vitamins that are necessary for mental and physical health. We use tomatoes in our daily life. The global agricultural industry is dominated by vegetables. Farmers typically suffer a significant loss when tomato plants are affected by multiple diseases. Diagnosis of tomato diseases at an early stage can help address this deficit. It is difficult to classify the attacking disease due to its range of manifestations. We can use deep learning models to identify diseased plants at an initial stage and take appropriate measures to minimize loss through early detection. For the initial diagnosis and classification of diseased plants, an effective deep learning model has been proposed in this paper. Our deep learning-based pre-trained model has been tuned twofold using a specific dataset. The dataset includes tomato plant images that show diseased and healthy tomato plants. In our classification, we intend to label each plant with the name of the disease or healthy that is afflicting it. With 98.93% accuracy, we were able to achieve astounding results using the transfer learning method on this dataset of tomato plants. Based on our understanding, this model appears to be lighter than other advanced models with such considerable results and which employ ten classes of tomatoes. This deep learning application is usable in reality to detect plant diseases.
基于精细卷积神经网络的番茄病害分类
西红柿含有丰富的维生素,这是身心健康所必需的。我们在日常生活中使用西红柿。全球农业以蔬菜为主。当番茄植物受到多种疾病的影响时,农民通常会遭受重大损失。在早期阶段诊断番茄疾病可以帮助解决这一缺陷。由于这种侵袭性疾病的表现范围很广,很难对其进行分类。我们可以利用深度学习模型在初始阶段识别病害植物,并采取适当措施,通过早期发现将损失降到最低。为了对病害植物进行初步诊断和分类,本文提出了一种有效的深度学习模型。我们基于深度学习的预训练模型已经使用特定的数据集进行了双重调整。该数据集包括显示患病和健康番茄植株的番茄植物图像。在我们的分类中,我们打算用正在折磨它的疾病或健康的名称来标记每一种植物。在这个番茄植物数据集上,我们使用迁移学习方法取得了惊人的结果,准确率达到98.93%。根据我们的理解,这个模型似乎比其他先进的模型更轻,有如此可观的结果,并且使用了十类西红柿。这种深度学习应用程序在现实中可用于检测植物病害。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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