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Application of Fuzzy C-Means Clustering Method to Classify Wheat Leaf Images Based on the Presence of Rust Disease

机译:模糊C型聚类方法在基于锈病存在的基础上对小麦叶片图像进行分类

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This paper presents a novel and efficient way to detect the presence and identification of disease in wheat leaf from its image. The system applies FCM on data-points consisting of selected features of a set of Wheat Leaf images. In the first step, number of clusters is fixed to 2, in order to divide the input into sets of diseased and undiseased leaf images. The diseased leaf set is further classified into 4 sets corresponding to possibility of occurrence of known 4 types of disease, by applying FCM on this set with number of clusters fixed to 4. We have proposed an efficient method for selection of feature set based on inter and intra-class variance. Although testing has been done only on wheat leaf images, this method can also be applied on other leaf images through careful selection of the feature set.
机译:本文介绍了一种新颖有效的方法,可以从其形象中检测麦片疾病的存在和鉴定。 该系统在数据点上应用FCM,包括一组小麦叶图像的所选特征。 在第一步中,簇数固定为2,以便将输入划分为患病和未发布的叶片图像集。 患病的叶片集进一步分为4组,与已知的4种疾病发生的可能性相对应,通过将FCM应用于固定为4的簇数。我们提出了一种基于INTEL的特征集的有效方法 和课外方差。 尽管仅在小麦叶片图像上进行了测试,但是通过仔细选择特征集,该方法也可以应用于其他叶片图像。

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