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PROBABILITY MAXIMUM MARGIN CRITERION FOR CROP DISEASE RECOGNITION

机译:作物病害识别的最大概率概率标准

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摘要

Crop disease seriously affects the yield and quality of crops and cause farmers to experience economic losses. Automatic detection of crop disease is an essential research topic to detect the disease symptoms as soon as they appear on the leaves. For crop disease management, it is important to automatically detect the crop diseases at a stage so as to treat them properly. In subspace dimension reduction-based data classification methods, the main topic is to design the betweenclass and within-class scatter matrices to obtain the mapping matrix from the training samples. But, there is much difference between the training samples. To eliminate the difference in designing the scatter matrices, in this article, based on the prior probability, a probability maximum margin criterion (MMC) is proposed for leaf spot image processing. Compared to the traditional MMC algorithm, in the proposed method, the two scatter matrices are expressed by the weighted mean vector of all training samples, which can overcome the influence of the outliers and the noise points, meanwhile improve the crop disease recognition rate. In this study, more than 100 classifying features are extracted from the disease leaf images of two kinds of cucumber diseases; probability MMC is performed for reduced dimensions in feature data processing, and then Knearest-neighbor classifier is used to identify the cucumber diseases. The experimental results on a cucumber disease leaf image database show that the proposed method is effective for crop disease recognition.
机译:作物病害严重影响作物的产量和质量,使农民蒙受经济损失。作物病害的自动检测是必不可少的研究主题,以发现病害症状,只要它们出现在叶子上即可。对于作物病害管理,重要的是在一个阶段自动检测作物病害,以便对其进行适当治疗。在基于子空间降维的数据分类方法中,主要主题是设计类间和类内散布矩阵,以从训练样本中获得映射矩阵。但是,训练样本之间有很大差异。为了消除设计散射矩阵的差异,在本文中,基于先验概率,提出了一种用于叶斑图像处理的概率最大余量准则(MMC)。与传统的MMC算法相比,该方法通过所有训练样本的加权均值向量表示两个散点矩阵,可以克服离群点和噪声点的影响,同时提高了作物病害的识别率。在这项研究中,从两种黄瓜疾病的病叶图像中提取了100多个分类特征。对特征数据处理中的缩减维执行概率MMC,然后使用Knearest-Neighbor分类器识别黄瓜疾病。在黄瓜病叶图像数据库上的实验结果表明,该方法对作物病害的识别是有效的。

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