Deep Learning Methods for Virus Identification from Digital Images

Luxin Zhang, W. Yan
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引用次数: 4

Abstract

The use of deep learning methods for virus identification from digital images is a timely research topic. Given an electron microscopy image, virus recognition utilizing deep learning approaches is critical at present, because virus identification by human experts is relatively slow and time-consuming. In this project, our objective is to develop deep learning methods for automatic virus identification from digital images, there are four viral species taken into consideration, namely, SARS, MERS, HIV, and COVID-19. In this work, we firstly examine virus morphological characteristics and propose a novel loss function which aims at virus identification from the given electron micrographs. We take into account of attention mechanism for virus locating and classification from digital images. In order to generate the most reliable estimate of bounding boxes and classification for a virus as visual object, we train and test five deep learning models: R-CNN, Fast R-CNN, Faster R-CNN, YOLO, and SSD, based on our dataset of virus electron microscopy. Additionally, we explicate the evaluation approaches. The conclusion reveals SSD and Faster R-CNN outperform in the virus identification.
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基于数字图像的病毒识别深度学习方法
利用深度学习方法从数字图像中识别病毒是一个及时的研究课题。鉴于电子显微镜图像,目前利用深度学习方法进行病毒识别至关重要,因为由人类专家进行病毒识别相对缓慢且耗时。在这个项目中,我们的目标是开发从数字图像中自动识别病毒的深度学习方法,考虑了四种病毒,分别是SARS, MERS, HIV和COVID-19。在这项工作中,我们首先研究了病毒的形态特征,并提出了一种新的损失函数,旨在从给定的电子显微照片中识别病毒。利用注意机制对数字图像中的病毒进行定位和分类。为了生成最可靠的边界框估计和病毒作为视觉对象的分类,我们基于我们的病毒电子显微镜数据集训练和测试了五个深度学习模型:R-CNN、Fast R-CNN、Faster R-CNN、YOLO和SSD。此外,我们还阐述了评估方法。结果表明,SSD和Faster R-CNN在病毒识别方面表现较好。
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