Plant Disease Detection using Image Processing- A Review

Surender Kumar, R. Kaur
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引用次数: 37

Abstract

This paper holds a survey on plant leaf diseases classification using image processing. Digital image processing has three basic steps: image processing, analysis and understanding. Image processing contains the preprocessing of the plant leaf as segmentation, color extraction, diseases specific data extraction and filtration of images. Image analysis generally deals with the classification of diseases. Plant leaf can be classified based on their morphological features with the help of various classification techniques such as PCA, SVM, and Neural Network. These classifications can be defined various properties of the plant leaf such as color, intensity, dimensions. Back propagation is most commonly used neural network. It has many learning, training, transfer functions which is used to construct various BP networks. Characteristics features are the performance parameter for image recognition. BP networks shows very good results in classification of the grapes leaf diseases. This paper provides an overview on different image processing techniques along with BP Networks used in leaf disease classification.
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利用图像处理技术进行植物病害检测
本文综述了利用图像处理技术进行植物叶片病害分类的研究进展。数字图像处理有三个基本步骤:图像处理、分析和理解。图像处理包括植物叶片的预处理,如分割、颜色提取、病害特定数据提取和图像过滤。图像分析通常涉及疾病的分类。利用PCA、SVM、Neural Network等多种分类技术可以根据植物叶片的形态特征进行分类。这些分类可以定义植物叶片的各种属性,如颜色、强度、尺寸。反向传播是最常用的神经网络。它具有许多学习、训练、传递函数,可用于构建各种BP网络。特征是图像识别的性能参数。BP网络在葡萄叶片病害分类中取得了很好的效果。本文综述了不同图像处理技术以及BP网络在叶片病害分类中的应用。
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