Apple Leaf Disease Detection using Deep Learning

S. K., Vishnu Raja P, Rima P, Pranesh Kumar M, Preethees S
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引用次数: 6

Abstract

In general, agriculture plays a very important role in contributing to human life on earth. Agriculture acts as the major source of providing food and economic growth of a region and as known plants are affected by several kinds of diseases either by excessive use of chemicals or by bacteria, viruses and fungus. It is important to diagnose plant diseases rightly, since use of wrong chemicals to treat the disease may increase the resistance of the pathogens which affects the plants. Manual diagnosis of diseases that affects the leaves of a plant will delay the process of diagnosis and treatment. Deep Learning frameworks can be used in detection and classification of the diseases. Convolution Neural Network based (CNN) based models are used in detection of apple leaf diseases. VGG16 framework is a CNN based architecture widely used in many deep learning classifications and it is easy to implement. VGG16 is used here for diagnosis and classifying apple leaf diseases. For implementing the framework tools and modules like Kaggle Notebook, Tensorflow, and Keras used. The VGG16 model is applied to the apple leaf disease dataset collected from the Kaggle repository. The proposed model aims in reducing complexity in classifying apple leaf disease using deep learning. The proposed system shows the best validation accuracy of 93.3% on the apple leaf disease dataset. This method outperforms some existing state-of-the-art. The processing time for each image is at an average of 14s. Hence the system proposed can be used by farmers to simplify the apple leaf disease classification process and help in early diagnosis and treatment of the disease.
利用深度学习技术检测苹果叶病
总的来说,农业在促进地球上的人类生活方面起着非常重要的作用。农业是一个地区提供粮食和经济增长的主要来源,众所周知,植物受到几种疾病的影响,这些疾病要么是由于过度使用化学品,要么是由于细菌、病毒和真菌。正确诊断植物病害是很重要的,因为使用错误的化学品治疗病害可能会增加影响植物的病原体的抗性。人工诊断影响植物叶片的疾病会延误诊断和治疗的进程。深度学习框架可用于疾病的检测和分类。基于卷积神经网络(CNN)的模型被用于苹果叶片病害的检测。VGG16框架是一种基于CNN的架构,广泛应用于许多深度学习分类中,并且易于实现。本文使用VGG16对苹果叶片病害进行诊断和分类。用于实现框架工具和模块,如Kaggle Notebook, Tensorflow和Keras。将VGG16模型应用于从Kaggle知识库中收集的苹果叶病数据集。该模型旨在利用深度学习降低苹果叶片病害分类的复杂性。该系统在苹果叶病数据集上的验证准确率为93.3%。这种方法优于一些现有的先进技术。每张图像的处理时间平均为14秒。因此,所提出的系统可为农民简化苹果叶病的分类过程,有助于疾病的早期诊断和治疗。
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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