IoT-enabled Contactless Doorbell with Facial Recognition

Gimhan Rodrigo, Dimanthinie De Silva
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Abstract

The COVID-19 epidemic has altered lifestyles all across the globe, causing people to take additional safety precautions and make using a face mask a requirement. Face masks are becoming more popular, making it occasionally challenging for people to recognize other people. Children and the elderly in particular would have trouble identifying their masked guests, which poses a serious hazard because thieves or burglars would take advantage of the situation. In this study, a system was created using IoT and deep learning technologies that works as a unit to offer a contactless solution to the ongoing COVID-19 pandemic while also enabling home owners to keep track of their visitors and receive notifications when someone comes over. The contactless doorbell was created with the help of a Raspberry Pi and a modified ResNet-50 model using ArcFace loss as the feature extractor to efficiently extract visible features from a masked face and support very accurate recognition. Due to the lack of a real masked face dataset with sufficient data, this study used a data augmentation method to add masks to face images from a dataset. The model was able to achieve a recognition accuracy of 98.27% when evaluated using a masked LFW dataset. Furthermore, testing the face recognition model in real-time with limited users, each with and without a mask yielded an accuracy of 100% in unmasked facial recognition and 90% on masked facial recognition.
具有面部识别功能的物联网非接触式门铃
新冠肺炎疫情改变了全球各地的生活方式,导致人们采取额外的安全预防措施,并要求使用口罩。口罩正变得越来越受欢迎,这使得人们偶尔很难认出别人。特别是孩子和老人很难认出他们戴着面具的客人,这构成了严重的危险,因为小偷或窃贼会利用这种情况。在这项研究中,使用物联网和深度学习技术创建了一个系统,该系统作为一个整体,为正在进行的COVID-19大流行提供非接触式解决方案,同时还使房主能够跟踪他们的访客,并在有人来访时收到通知。非接触式门铃是在树莓派和改进的ResNet-50模型的帮助下创建的,使用ArcFace loss作为特征提取器,有效地从蒙面中提取可见特征,并支持非常准确的识别。由于缺乏真实且数据充足的人脸数据集,本研究采用数据增强方法对数据集中的人脸图像进行蒙版添加。当使用蒙面LFW数据集进行评估时,该模型能够达到98.27%的识别准确率。此外,在有限的用户中实时测试人脸识别模型,每个用户都有和没有面具,在无面具面部识别中准确率为100%,在面具面部识别中准确率为90%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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