秋粘虫(FAW)飞蛾自动图像捕获和识别的机器学习算法

S. H. Chiwamba, J. Phiri, P. O. Nkunika, Mayumbo Nyirenda, M. Kabemba, P. Sohati
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引用次数: 4

摘要

自动化昆虫学是受到计算机科学家及其支持学科相当重视的领域之一。最近对秋粘虫(Spodoptera frugiperda)在非洲特别是南部非洲发展共同体(SADC)所受到的关注进一步证实了这一点。由于FAW以其破坏性影响而闻名,粮食及农业组织(粮农组织)、南部非洲发展共同体和赞比亚大学(UNZA)等利益攸关方已同意开发强有力的早期监测和预警系统。为了补充利益相关者的努力,我们选择了人工智能的一个分支,它采用了被称为Google TensorFlow的深度神经网络架构。这是一种先进的机器学习技术,可用于识别一汽飞蛾。在本文中,我们使用Google TensorFlow,这是一个开源的深度学习软件库,用于定义、训练和部署机器学习模型。利用迁移学习技术在TensorFlow中对Inception v3模型在昆虫数据集上进行再训练,减少了训练时间,提高了一飞蛾识别的准确性。再训练模型的训练准确率为57 ~ 60%,交叉熵为65 ~ 70%,验证准确率为
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Algorithms for automated Image Capture and Identification of Fall Armyworm (FAW) Moths
Automated entomology is one of the field that has received a fair attention from the computer scientists and its support disciplines. This can further be confirmed by the recent attention that the Fall Armyworm (FAW) (Spodoptera frugiperda) has received in Africa particularly the Southern African Development Community (SADC). As the FAW is known for its devastating effects, stakeholders such as the Food and Agriculture Organization (FAO), SADC and University of Zambia (UNZA) have agreed to develop robust early monitoring and warning system. To supplement the stakeholders’ efforts, we choose a branch of artificial intelligence that employs deep neural network architectures known as Google TensorFlow. It is an advanced state-of-the-art machine learning technique that can be used to identify the FAW moths. In this paper, we use Google TensorFlow, an open source deep learning software library for defining, training and deploying machine learning models. We use the transfer learning technique to retrain the Inception v3 model in TensorFlow on the insect dataset, which reduces the training time and improve the accuracy of FAW moth identification. Our retrained model achieves a train accuracy of 57 – 60 %, cross entropy of 65 – 70% and validation accuracy of 
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