玉米作物病虫害检测主要算法的比较研究

D. Sheema, K. Ramesh, P. Renjith, A. Lakshna
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引用次数: 5

摘要

玉米害虫的早期防治是精准农业中的一个重要课题。农民只有尽早发现病虫害,才能预防病虫害,同时也能避免经济损失。这种方法可以最大限度地减少农药的使用,并能带来健康的作物。本文对算法的特点进行了比较研究,以确定训练时间、训练数据、优缺点和准确率。在本研究中,我们发现Faster R-CNN准确率较好,但时延较高。更快的R-CNN卷积神经网络是开发用户友好的害虫自动识别系统的理想选择。采用所提出的模型可以进一步改进目标检测方法。我们提出了一种新的算法来弥补这一缺陷,使其在精度和时延上都能达到最好的效果。IoU方法支持从实际对象中找到预测对象,因此害虫可以从作物中识别。伪代码可以用于开发实时系统,以有效和高效的方式显示过程。一些样本已经初始化,以检查所提出的算法的性能指标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparative Study of Major Algorithms for Pest Detection in Maize Crop
Early-stage control of maize plant pest is a big issue in precision agriculture. Farmers can prevent pest only if they identified as early as possible and can avoid economic losses also. This type of process can minimize the usage of pesticides and can bring healthy crop. Here algorithm features are takes place for comparative study to identify the training time, training data, merits, demerits and accuracy. In this study, we found Faster R-CNN is good in accuracy but time delay was high. Faster R-CNN convolutional neural network is desirable to develop user friendly system for the farmers that can automatically identify pest. The object detection method can be further improved by adopting the proposed model. We proposed new algorithm to replace the drawback and to provide best result in both accuracy and time delay. IoU method supports to find the prediction object from the real object, hence the pest can identify from the crop. The pseudocode can use to develop the real time system to bring out the process in effective and also efficient manner. Some of the samples have initialize to check the performance metrics of the proposed algorithm.
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