Defect Identification and Classification of Tomato Leaf Using Convolutional Neural Network

S. Shargunam, G. Rajakumar
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Abstract

Tomatoes are the most commonly grown crop globally, and they are used in almost every kitchen. India holds second place in the production of tomatoes. Due to the various kinds of diseases, the quantity and quality of tomato crop go down. Identifying the diseases in the earlier stage is very important and will help the farmers save the crop. The first initial step is pre-processing, for the Canny edge detection method is used for detecting the edges in the tomato leaves. The classification of tomato leaves is to be carried out by extracting the features like color, shape, and texture. Extracted features from segmented images are fed into classification. The convolutional neural network algorithm will be used, which will give a better accuracy to classify the diseases in the tomato leaves.
基于卷积神经网络的番茄叶片缺陷识别与分类
西红柿是全球种植最普遍的作物,几乎每个厨房都有。印度的番茄产量位居世界第二。由于各种病害的发生,致使番茄产量和品质下降。在早期阶段发现病害是非常重要的,这将有助于农民拯救作物。第一步是预处理,使用Canny边缘检测方法检测番茄叶片的边缘。番茄叶片的分类是通过提取番茄叶片的颜色、形状、纹理等特征来实现的。从分割后的图像中提取特征进行分类。将使用卷积神经网络算法,该算法将对番茄叶片的疾病进行更好的分类。
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