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Detection of Leaf Disease Using Principal Component Analysis and Linear Support Vector Machine

机译:基于主成分分析和线性支持向量机的叶片病害检测

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Agriculturalists find difficulties in classifying the diseases in leaves. In olden days, farmers detected the leaf diseases by observing the leaf by its appearance which does not provide accurate results. The simple, efficient and computationally effective plant disease identification system should be introduced to help farmers to detect the leaf diseases with high accuracy. In this paper, the diseases in the leaves are detected by extracting high quality features of the leaf by Principal Component Analysis. It is an image retrieval technique used to extract the high dimension feature of the image without losing its originality. The features such as perimeter, minor axis, area, major axis, equivalence diameter etc., are extracted from the diseased leaf. The input image is pre-processed by removing the noise using median filter, extracting the edges using Sobel filter, identifying the direction of the leaf using Gabor filter and segmenting the image by threshold segmentation. Finally, Linear Support Vector Machine classifier identifies the support vectors to identify the disease. Experiments are carried out using the datasets of tomato plant leaves where tomato is cultivated large scale in Coimbatore, India. Powdery mildew and early blight diseases are the most common disease in tomato which is detected and analysed in this work. The results obtained shows that there is an increase in accuracy when compared to other methodologies.
机译:农民很难对叶子中的疾病进行分类。在过去,农民通过观察叶子的外观来检测叶子的病害,但无法提供准确的结果。应该引入简单,高效和计算有效的植物病害识别系统,以帮助农民高精度地检测叶片病害。在本文中,通过主成分分析提取叶子的高质量特征来检测叶子中的病害。这是一种图像检索技术,用于提取图像的高维特征而不会丢失其独创性。从患病叶片中提取特征,例如周长,短轴,面积,长轴,当量直径等。通过使用中值滤波器消除噪声,使用Sobel滤波器提取边缘,使用Gabor滤波器识别叶子的方向以及通过阈值分割对图像进行分割,可以对输入图像进行预处理。最后,线性支持向量机分类器识别支持向量以识别疾病。使用在印度哥印拜陀大规模种植番茄的番茄植物叶片数据集进行了实验。白粉病和早疫病是番茄中最常见的疾病,这项工作可以对其进行检测和分析。所获得的结果表明,与其他方法相比,准确性有所提高。

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