基于无人机图像的疾病分类混合元启发式算法

Yagnasree Sirivella, Anuj Jain
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引用次数: 0

摘要

最近的技术进步是非常惊人的,因为它们使远程管理和监控系统成为可能。在技术突破的帮助下,传统农业正在向“智能农业”过渡,其中包括实施智能灌溉系统和远程监测作物的生长。特别是,无人机在复杂的无人机捕捉作物照片和喷洒害虫的能力方面发挥着重要作用。然后,从无人机获得的图像受到各种形式的计算机辅助处理,以确定作物的叶子是否自然健康,患病或腐烂。几组研究人员研究了各种方法,包括聚类、机器学习和深度学习,目的是确定叶子的性质,并根据它们所具有的特征对它们进行分类。这些特征对于分类是必要的,但处理它们所需的时间会因为它们的巨大尺寸而增加。因此,本研究的作者提出了一种混合特征约简技术,该技术混合了两种不同的元启发式算法。在这种情况下,升级版的布谷鸟搜索算法与粒子群配对,以寻找最有利的特征。其中,选取纹理的GLCM、GLDM和局部二值模式特征等最优特征进行选择。利用基于反向传播技术的神经网络,利用最优特征进行分类。所建议的方法是基于在自然环境中拍摄的健康和患病叶片标本的照片。整个过程在MATLAB R2021a程序的辅助下进行,并对结果进行了准确性、灵敏度和特异性分析。
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A Hybrid Metaheuristic Algorithm for Diseases Classification Using UAV Images
Recent advances in technology are very astounding since they have made it possible to manage and monitor systems remotely. Traditional farming is undergoing a transition towards "smart farming" with the assistance of technological breakthroughs, which include the implementation of intelligent irrigation systems and the remote monitoring of the development of crops. In particular, the Unmanned Aerial Vehicle plays a significant role in sophisticated UAVs' ability to capture photographs of crops and spray for pests. The image that is obtained from UAVs is then subjected to various forms of computer-assisted processing in order to determine whether or not the crop's leaves are naturally healthy, diseased, or rotten. Several groups of researchers investigated a variety of approaches, including clustering, machine learning, and deep learning, with the goal of determining the nature of the leaves and categorizing them according to the characteristics they possessed. These traits are necessary for categorization, but the time required to process them will be increased because of their enormous size. Because of this, the authors of this study present a hybrid feature reduction technique that is a blend of two different metaheuristic algorithms. In this case, an upgraded version of the cuckoo search algorithm was paired with the particle swarm to find the most advantageous characteristics. In this, the optimum features of the texture, such as its GLCM, GLDM, and local binary pattern features, were chosen for selection. Using a neural network that was based on the back propagation technique, the optimal characteristics were used for classification. The method that has been suggested is based on photographs that were taken in natural settings of sets of healthy and diseased leaf specimens. The entire process is carried out with the assistance of the MATLAB R2021a program and the results are analyzed with Accuracy, Sensitivity, and Specificity.
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来源期刊
Journal of Computer Science
Journal of Computer Science Computer Science-Computer Networks and Communications
CiteScore
1.70
自引率
0.00%
发文量
92
期刊介绍: Journal of Computer Science is aimed to publish research articles on theoretical foundations of information and computation, and of practical techniques for their implementation and application in computer systems. JCS updated twelve times a year and is a peer reviewed journal covers the latest and most compelling research of the time.
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