ANALYSIS OF GRAPE LEAF DISEASE BY USING DEEP CONVOLUTIONAL NEURAL NETWORK

Muhammad Azam Zia, Ayesha Akram, Imran Mumtaz, Muhammad Asim Saleem, Muhammad Asif
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Abstract

Smart agriculture is a strategy for restructuring and reorganizing agricultural systems to ensure food security in the face of emerging climate change challenges. Diseases cause problems on agricultural development and yield and they're generally tough to control. It is necessary to have a precise diagnosis of the grape leaf diseases and preventative measures before time. In order to diagnose grape leaf diseases, this research suggests a novel recognition method that is based on enhanced convolutional neural networks. Firstly; addressed the grape leaf disease types into four categories such as Esca, black rot, Leaf Blight, and healthy which cause loss for grape industry every year. A large dataset of labeled images is collected and prepared for training. The images are typically pre-processed to enhance their features and remove any noise or artifacts that might interfere with the CNN's ability to recognize patterns. Data collection, data pre-processing, and image categorization are the three main phases of the study's approach. Secondly; Images are classified and mapped to their respective disease categories on the basis of three features namely, color and texture. Extensive experiments performed on MATLAB using CNN model AlexNet. The CNN training process used learning rate 0.0001 which produced better results and obtained better accuracy. Overall, an accurate diagnosis of grape leaf diseases and the implementation of effective preventative measures will help to reduce the impact of diseases on agricultural development and yield. This will help to ensure a sustainable and profitable grape production industry for farmers and communities.
基于深度卷积神经网络的葡萄叶片病害分析
智慧农业是一项调整和重组农业系统的战略,以确保在面临新出现的气候变化挑战时的粮食安全。疾病会给农业发展和产量带来问题,而且通常很难控制。对葡萄叶片病害进行准确的诊断并及时采取防治措施是十分必要的。为了诊断葡萄叶片病害,本研究提出了一种基于增强卷积神经网络的葡萄叶片病害识别方法。首先;将每年给葡萄产业造成损失的葡萄叶病类型分为埃斯卡病、黑腐病、叶枯病和健康病四大类。收集标记图像的大型数据集并准备用于训练。这些图像通常经过预处理,以增强其特征,并去除可能干扰CNN识别模式能力的任何噪声或人工制品。数据收集、数据预处理和图像分类是该研究方法的三个主要阶段。其次;根据颜色和纹理三个特征对图像进行分类并映射到各自的疾病类别。在MATLAB上使用CNN模型AlexNet进行了大量实验。CNN的训练过程使用学习率为0.0001,产生了更好的结果,获得了更好的准确率。总体而言,准确诊断葡萄叶片病害并实施有效的预防措施将有助于减少病害对农业发展和产量的影响。这将有助于确保葡萄种植业对农民和社区的可持续发展和盈利。
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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