基于卷积神经网络的番茄叶片病害检测

Prajwala Tm, A. Pranathi, Kandiraju SaiAshritha, Nagaratna B. Chittaragi, S. Koolagudi
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引用次数: 154

摘要

番茄作物是印度市场上重要的主粮作物,具有很高的商业价值,产量很大。病害对植物的健康有害,反过来又影响其生长。为了确保对栽培作物的损失最小,对其生长进行监督是至关重要的。有许多类型的番茄疾病以惊人的速度以作物叶片为目标。本文采用了卷积神经网络模型LeNet的一种细微变化来检测和识别番茄叶片病害。提出的工作的主要目的是找到一个解决方案的问题,番茄叶病检测使用最简单的方法,同时利用最小的计算资源,以达到与最先进的技术相媲美的结果。神经网络模型采用自动特征提取来帮助将输入图像分类为各自的疾病类别。该系统达到了94 - 95%的平均精度,表明即使在不利条件下,神经网络方法也是可行的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tomato Leaf Disease Detection Using Convolutional Neural Networks
The tomato crop is an important staple in the Indian market with high commercial value and is produced in large quantities. Diseases are detrimental to the plant's health which in turn affects its growth. To ensure minimal losses to the cultivated crop, it is crucial to supervise its growth. There are numerous types of tomato diseases that target the crop's leaf at an alarming rate. This paper adopts a slight variation of the convolutional neural network model called LeNet to detect and identify diseases in tomato leaves. The main aim of the proposed work is to find a solution to the problem of tomato leaf disease detection using the simplest approach while making use of minimal computing resources to achieve results comparable to state of the art techniques. Neural network models employ automatic feature extraction to aid in the classification of the input image into respective disease classes. This proposed system has achieved an average accuracy of 94–95 % indicating the feasibility of the neural network approach even under unfavourable conditions.
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