基于卷积神经网络模型的屋顶害虫图像农药推荐

E. Ramanujam, S. Padmavathi, Nashwa Ahmad Kamal
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引用次数: 0

摘要

屋顶农业在城市越来越受欢迎,它增加了房屋和建筑物屋顶上有机蔬菜的种植,用水最少。但是屋顶农业更容易受到害虫的侵害,从而降低了植物的质量。城市居民是农业的新手,他们不知道害虫的袭击。各种研究人员已经提出了使用特定疾病的图像处理技术和机器学习算法的害虫识别系统,这些系统在泛化上显示出较低的准确性和不友好的用户界面。为了提供用户友好的害虫识别系统,本文提出了一种基于预训练卷积神经网络模型AlexNet的移动害虫识别系统。采用不同核数和卷积神经网络层数对不同屋顶害虫进行了实验分析。此外,最好的评估预训练模型已转换为使用REST API的移动应用程序,用于向新手用户推荐农药。
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Recommendation of Pesticide for Roof Top Pest Image Using Convolutional Neural Network Model
Rooftop farming in urban places is gaining more popularity which increases the cultivation of organic vegetables on the rooftop of houses and buildings with the minimal utilization of water. But rooftop farming is more vulnerable to pest infestation which reduces the quality of plants. Urban residents are novices in farming, and they are unaware of the pest attacks. Various researchers have proposed pest identification systems using image processing techniques and machine learning algorithms specific to particular disease which shows less accuracy on generaliztion and not user-friendly. To provide user-friendly pest identification system, this paper proposes a mobile based pest identification system using the concept of pre-trained convolutional neural network model – AlexNet. Experimental results have been analyzed with various rooftop pests using different kernel sizes and layers of convolutional neural network. In addition, the best evaluated pre-trained model has been converted to a mobile application using REST API for the recommendation of pesticide to the novice user.
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