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Deep neural network based Rider-Cuckoo Search Algorithm for plant disease detection

机译:基于深度神经网络的骑行者 - 杜鹃搜索植物疾病检测算法

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摘要

Agriculture is the main source of wealth, and its contribution is essential to humans. However, several obstacles faced by the farmers are due to different kinds of plant diseases. The determination and anticipation of plant diseases are the major concerns and should be considered for maximizing productivity. This paper proposes an effective image processing method for plant disease identification. In this research, the input image is subjected to the pre-processing phase for removing the noise and artifacts present in the image. After obtaining the pre-processed image, it is subjected to the segmentation phase for obtaining the segments using piecewise fuzzy C-means clustering (piFCM). Each segment undergoes a feature extraction phase in which the texture features are extracted, which involves information gain, histogram of oriented gradients (HOG), and entropy. The obtained texture features are subjected to the classification phase, which uses the deep belief network (DBN). Here, the proposed Rider-CSA is employed for training the DBN. The proposed Rider-CSA is designed by integrating the rider optimization algorithm (ROA) and Cuckoo Search (CS). The experimental results proved that the proposed Rider-CSA-DBN outperformed other existing methods with maximal accuracy of 0.877, sensitivity of 0.862, and the specificity of 0.877, respectively.
机译:农业是财富的主要来源,其贡献对人类至关重要。然而,农民面临的几个障碍是由于不同种类的植物疾病。植物疾病的测定和预期是主要问题,应该考虑最大限度地提高生产力。本文提出了一种有效的植物疾病鉴定的图像处理方法。在该研究中,对输入图像进行预处理阶段,以去除图像中存在的噪声和伪像。在获得预处理图像之后,将其经受分割阶段,用于使用分段模糊C-Means聚类(PIFCM)获得段。每个段经历一个特征提取阶段,其中提取纹理特征,其涉及面向梯度(HOG)和熵的信息增益,直方图。获得所获得的纹理特征,进行分类阶段,其使用深度信仰网络(DBN)。这里,所提出的骑手-CSA用于训练DBN。所提出的骑手-CSA是通过集成骑手优化算法(ROA)和CUCKOO搜索(CS)来设计的。实验结果证明,提出的骑手-CSA-DBN优于其他现有方法,最大精度为0.877,敏感性为0.862,分别为0.877的特异性。

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