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Plant Leaf Disease Detection and Classification Based on CNN with LVQ Algorithm

机译:基于LVQ算法的CNN植物叶片病害检测与分类

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The early detection of diseases is important in agriculture for an efficient crop yield. The bacterial spot, late blight, septoria leaf spot and yellow curved leaf diseases affect the crop quality of tomatoes. Automatic methods for classification of plant diseases also help taking action after detecting the symptoms of leaf diseases. This paper presents a Convolutional Neural Network (CNN) model and Learning Vector Quantization (LVQ) algorithm based method for tomato leaf disease detection and classification. The dataset contains 500 images of tomato leaves with four symptoms of diseases. We have modeled a CNN for automatic feature extraction and classification. Color information is actively used for plant leaf disease researches. In our model, the filters are applied to three channels based on RGB components. The LVQ has been fed with the output feature vector of convolution part for training the network. The experimental results validate that the proposed method effectively recognizes four different types of tomato leaf diseases.
机译:对农业而言,疾病的早期发现对于提高作物的产量很重要。细菌斑,晚疫病,乌贼叶斑和黄色弯曲叶病会影响番茄的农作物品质。自动分类植物病害的方法也有助于在检测到叶病症状后采取行动。本文提出了一种基于卷积神经网络(CNN)模型和学习向量量化(LVQ)算法的番茄叶病检测和分类方法。该数据集包含具有四种疾病症状的500张番茄叶片图像。我们已经为自动特征提取和分类建模了CNN。颜色信息被积极地用于植物叶病研究。在我们的模型中,将滤镜应用于基于RGB分量的三个通道。 LVQ已馈送了卷积部分的输出特征向量,用于训练网络。实验结果验证了该方法能够有效识别四种不同类型的番茄叶病。

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