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Artificial Intelligence in Smart Agriculture: Modified Evolutionary Optimization Approach for Plant Disease Identification

机译:智慧农业中的人工智能:用于植物病害识别的改进进化优化方法

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Apple leaf disease is a critical factor affecting the production and consistency of apples. Typically, the current diagnostic equipment requires significant time to diagnose diseases; thus, farmers also overlook the best opportunity to avoid and cure diseases. Detecting apple leaf diseases is a significant research issue, and its primary goal is to find an appropriate technique for diagnosing leaf diseases. This article attempted to suggest a way to diagnose apple plant leaf disease using the Deep Neural Network (DNN). The architecture of the PDDS (Plant Disease Detection System) is planned. The Robust Speed Up Feature (SURF), which allows achieving greater identification and classification precision, is used to remove functionalities and to refine the Modified Grasshopper Optimization Algorithm (MGOA). Classification parameters such as accuracy, retention, F-measure, mistake, and accuracy are measured, and a comparative review shows the efficiency of the proposed approach.
机译:苹果叶病是影响苹果产量和一致性的关键因素。通常,当前的诊断设备需要大量时间来诊断疾病。因此,农民也忽视了避免和治愈疾病的最佳机会。检测苹果叶片疾病是一个重要的研究课题,其主要目标是找到一种诊断叶片疾病的合适技术。本文试图提出一种使用深度神经网络(DNN)诊断苹果植物叶病的方法。规划了PDDS(植物病害检测系统)的体系结构。强大的加速功能(SURF)可以实现更高的识别和分类精度,可用于删除功能并完善修改的蚱hopper优化算法(MGOA)。测量了分类参数,如准确性,保留率,F度量,错误和准确性,并且进行了比较审查,显示了该方法的有效性。

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