基于卷积神经网络(cnn)迁移学习的无人机图像非法人群检测预防Covid-19疾病

Jia Eek Ong, M. A. As’ari
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摘要

COVID-19于2019年12月起源于中国武汉,并于2020年1月迅速成为全球疫情。COVID-19是由SARS-CoV-2引起的疾病,是一种人际传播疾病。由于这是一种人际传播疾病,因此不允许在公共场所进行大规模聚集,以防止新冠病毒的可能传播。然而,目前的监控技术,如闭路电视(CCTV),只能覆盖有限的公共区域,缺乏移动性。图像分类是检测图像中人群的方法之一,可以通过机器学习或深度学习方法来完成。近年来,深度学习,特别是卷积神经网络(CNN)在图像分类方面的表现优于经典机器学习,而对CNN建模的常用方法是通过迁移学习。因此,本研究旨在开发一种卷积神经网络,通过使用迁移学习技术的图像分类,从离线无人机视图图像中检测非法人群聚集。在获得的相同数据集上使用多个模型进行训练,并通过混淆矩阵评估全模型的性能。基于性能分析,ResNet50模型达到95%的测试准确率、95%的精度、95%的召回率和95%的F1-score,优于VGG16模型和InceptionV3模型。综上所述,可以得出结论,深度学习方法使用了一个预训练的卷积神经网络,可以在本研究中用于对物体图像进行分类。
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Drone Image Based Illegal Crowd Detection For Covid-19 Disease Prevention Via Convolutional Neural Networks (CNNs) Transfer Learning
COVID-19 originated in Wuhan, China, in December 2019 and quickly became a global outbreak in January 2020. COVID-19 is a disease caused by SARS-CoV-2, which is a human transmission disease. Since it is a human transmission disease, thus mass gathering in public is not allowed to prevent the possible spread of COVID-19. However, the current monitoring technology, such as closed-circuit television (CCTV), only cover a limited area of the public and lack of mobility. Image classification is one of the approaches that can detect crowds in an image and can be done through either machine learning or deep learning approach. Recently, deep learning, especially convolutional neural networks (CNNs) outperform classical machine learning in image classification and the common approach for modelling CNN is through transfer learning. Thus, this study aims to develop a convolutional neural network that can detect illegal crowd gathering from offline drone view images through image classification using the transfer learning technique. Several models are used to train on the same dataset obtained, and the all-model performance is evaluated through a confusion matrix. Based on performance analysis, it shows that the ResNet50 model outperforms the VGG16 model and InceptionV3 model by achieving 95% test accuracy, 95% precision, 95% recall and 95% F1-score. In conclusion, it can be concluded that the deep learning approach uses a pre-trained convolutional neural network that can be used to classify object images in this study.
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