Detection of Pepper and Tomato leaf diseases using deep learning techniques

B. Tej, Farah Nasri, A. Mtibaa
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引用次数: 4

Abstract

Agriculture industry assumes a big role in several countries’ economies by offering a few advantages including food, national income, and employment opportunities. However, it confronts a major challenge which is plant disease. Around 42% of the world’s total crops are destroyed yearly by diseases. So, the identification of plant disease in an earlier stage is critical for minimizing the use of pesticides and reducing crop loss. This research is focusing on the recognition and classification of various tomato and pepper diseases based on Deep learning techniques. Two Convolutional neural networks (CNN) models Resnet 152 and Resnet 50 are used with and without data augmentation. This technique is used when the datasets are small, it expands the number of training images without adding new images. A self-dataset of 488 images of tomato and pepper diseases leaves are collected in Monastir, Tunisia region under the supervision of an agricultural engineer working in the field of plant protection in the Minister of Agriculture. The trained model with data augmentation gives better results than without applying it.
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利用深度学习技术检测辣椒和番茄叶片病害
农业在一些国家的经济中扮演着重要的角色,它提供了包括食品、国民收入和就业机会在内的一些优势。然而,它面临着一个重大的挑战,那就是植物病害。每年约有42%的世界农作物被病害摧毁。因此,在早期阶段识别植物病害对于最大限度地减少农药的使用和减少作物损失至关重要。本研究的重点是基于深度学习技术的各种番茄和辣椒病害的识别和分类。两个卷积神经网络(CNN)模型Resnet 152和Resnet 50在有和没有数据增强的情况下使用。该技术用于数据集较小的情况下,它可以在不增加新图像的情况下扩展训练图像的数量。在农业部植物保护领域工作的一名农业工程师的监督下,在突尼斯Monastir地区收集了488张番茄和辣椒病害叶片图像的自数据集。经过数据增强的训练模型比没有增强的模型得到更好的结果。
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