基于记忆高效卷积神经网络的水稻害虫检测与识别

Zihad Hossain Nayem, Iqbal Jahan, Abdul Aziz Rakib, Solaiman Mia
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引用次数: 2

摘要

水稻害虫检测是我国农业发展的重要组成部分。全世界许多农民受到水稻害虫的影响,这些害虫经常危及水稻生产的可持续性。有许多类型的机器学习技术用于检测水稻害虫。卷积神经网络(cnn)被认为是目前图像识别的最先进技术。现有研究中的大多数模型处理的数据集具有少量的图像和类。在本文中,我们用10400张图像对我们所提出的模型进行了训练,这些图像包含10个不同的类别,包括细菌性叶枯病、细菌性叶枯病、细菌性穗枯病、Blast、褐斑病、Dead Heart、霜霉病、Healthy、Hispa和Tungro。在提出的模型中使用了自定义CNN进行害虫检测,该模型将检测不同类别的水稻害虫。为了实现我们的模型,我们使用了带有TensorFlow后端的Keras框架。此外,我们提出的模型在只有57万个参数的情况下,验证准确率为88.18%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection and Identification of Rice Pests Using Memory Efficient Convolutional Neural Network
Rice pest detection is a very important part for the development of our agriculture. Numerous farmers are impacted worldwide by rice pests that frequently endanger the sustainability of rice production. There are many types of machine learning techniques for detecting the rice pests. CNNs (Convolutional Neural Networks) are currently regarded as the state-of-the-art technology for image recognition. Most of the models in existing researches worked with datasets that have small number of images and classes. In this paper, We have performed the training of our proposed model with 10400 images, containing ten different classes including Bacterial Leaf Blight, Bacterial Leaf Streak, Bacterial Panicle Blight, Blast, Brown Spot, Dead Heart, Downy Mildew, Healthy, Hispa and Tungro. A custom CNN has been used in the proposed model for pest detection, which will detect different classes of rice pests. To implement our model, we have used the Keras framework with a TensorFlow backend. In addition, our proposed model gives 88.18% validation accuracy while having only 0.57 million parameters.
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