基于卷积神经网络的植物叶片病害识别系统

Diponkor Bala, Mohammed Mynuddin, Mohammad Iqbal Hossain, Mohammad Anwarul Islam, Mohammad Alamgir Hossain, M. Abdullah
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引用次数: 2

摘要

植物被认为是人类的能源来源。植物病害会破坏农业,降低收成。这直接影响到农民的收入和人类健康。植物病害鉴定是全世界农民面临的最广泛的挑战之一。因此,叶片病害鉴定在农业中是至关重要的。传统的病害检测方法难以对大量的植物叶片感染性病害进行检测。利用图像识别植物叶片病害的能力正在迅速提高。然而,植物叶片图像由于其复杂的结构和形状,给处理带来了困难。虽然现代深度学习算法可以对植物疾病进行分类和诊断,但制备植物叶片图像被广泛认为是最重要和最难的一步。预处理对深度学习的最终结果影响很大。然而,所提出的基于视觉的方法有效地检测和观察疾病的外部方面。我们在文书工作中使用了新植物病害数据集。我们提出了一个经过特殊训练的卷积神经网络(CNN)的深度学习,它可以帮助植物叶片图像的分类。我们的方法使用了CNN架构,该架构是在这些植物叶片图像的集合上训练的。该方法准确地将植物叶片图像分类为38种植物叶片病害,测试准确率为99.29%,优于先前定义为最先进的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Robust Plant Leaf Disease Recognition System Using Convolutional Neural Networks
Plants are considered an energy supply to humanity. Plant diseases can damage farming, reducing harvest yields. This immediately affects farmers’ income and human health. Plant disease identification is one of the world’s most extensive challenges for farmers. Thus, leaf disease identification is vital in agriculture. Traditional disease detection approaches are difficult to detect in large numbers of plant leaf infectious illnesses. The ability to identify plant leaf diseases using images is rapidly improving. However, processing plant leaf images is difficult due to their complicated structure and shape. While modern deep learning algorithms can categorize and diagnose plant sickness, preparing plant leaf images is widely acknowledged as the most important and hardest step. Preprocessing has a big impact on the final results of deep learning. However, the proposed vision-based approaches efficiently detect and observe illness’s external aspects. We have used the New Plant Diseases Dataset in our paperwork. We proposed deep learning with a specially trained convolutional neural network (CNN), which can aid in the classification of plant leaf images. Our approach makes use of a CNN architecture that was trained on a collection of these plant leaf images. This method accurately classifies plant leaf images into 38 types of plant leaf diseases with 99.29% test accuracy, outperforming approaches previously defined as state-of-the-art.
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