Identification of Covid’19 Vaccinator by Deep Learning Approach Using Contactless Palmprints

B. Vivekanandam
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Abstract

The invention of the first vaccine has also raised several anti-vaccination views among people. Vaccine reluctance may be exacerbated by the growing reliance on social media, which is considered as a source of health information. During this COVID'19 scenario, the verification of non-vaccinators via the use of biometric characteristics has received greater attention, especially in areas such as vaccination monitoring and other emergency medical services, among other things. The traditional digital camera utilizes the middle-resolution images for commercial applications in a regulated or contact-based environment with user participation, while the latter uses high-resolution latent palmprints. This research study attempts to utilize convolutional neural networks (CNN) for the first time to perform contactless recognition. To identify the COVID '19 vaccine using the CNN technique, this research work has used the contactless palmprint method. Further, this research study utilizes the PalmNet structure of convolutional neural network to resolve the issue. First, the ROI region of the palmprint was extracted from the input picture based on the geometric form of the print. After image registration, the ROI region is sent into a convolutional neural network as an input. The softmax activation function is then used to train the network so that it can choose the optimal learning rate and super parameters for the given learning scenario. The neural networks of the deep learning platform were then compared and summarized.
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基于非接触式掌纹的深度学习方法识别Covid - 19疫苗接种者
第一种疫苗的发明也在人们中引起了一些反对接种疫苗的观点。越来越多地依赖被视为卫生信息来源的社交媒体,可能会加剧人们不愿接种疫苗的情况。在COVID - 19疫情期间,通过使用生物特征对非接种者进行验证受到了更多关注,特别是在疫苗接种监测和其他紧急医疗服务等领域。传统数码相机利用中分辨率图像用于商业应用,在规范或基于用户参与的接触环境中,而后者使用高分辨率的潜在掌纹。本研究首次尝试利用卷积神经网络(CNN)进行非接触式识别。为了使用CNN技术识别COVID - 19疫苗,本研究使用了非接触式掌纹法。进一步,本研究利用卷积神经网络的棕榈网结构来解决这一问题。首先,根据掌纹的几何形状,从输入图像中提取掌纹的感兴趣区域;图像配准后,将感兴趣区域作为输入送入卷积神经网络。然后使用softmax激活函数对网络进行训练,使其能够为给定的学习场景选择最优学习率和超参数。然后对深度学习平台的神经网络进行了比较和总结。
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