论文标题
蒙版的面部识别数据集和应用程序
Masked Face Recognition Dataset and Application
论文作者
论文摘要
为了有效防止Covid-19病毒的传播,几乎每个人在冠状病毒流行期间都戴着口罩。在许多情况下,这几乎使传统的面部识别技术无效,例如社区访问控制,面部访问控制,面部出勤率,火车站的面部安全检查等。因此,提高面部面孔现有面部识别技术的识别性能非常迫切。当前大多数先进的面部识别方法都是基于深度学习而设计的,这取决于大量的面部样本。但是,目前尚无公开可用的蒙版面部识别数据集。为此,这项工作提出了三种类型的蒙版面部数据集,包括蒙版的面部检测数据集(MFDD),现实世界掩盖的面部识别数据集(RMFRD)和模拟的蒙版面部识别数据集(SMFRD)。在其中,据我们所知,RMFRD目前是世界上最大的现实世界蒙面的面部数据集。这些数据集可供行业和学术界免费使用,可以开发蒙面面孔上的各种应用。我们开发的多个掩盖面部识别模型达到了95%的精度,超过了行业报告的结果。我们的数据集可在以下网址找到:https://github.com/x-zhangyang/real-world-masked-face-dataset。
In order to effectively prevent the spread of COVID-19 virus, almost everyone wears a mask during coronavirus epidemic. This almost makes conventional facial recognition technology ineffective in many cases, such as community access control, face access control, facial attendance, facial security checks at train stations, etc. Therefore, it is very urgent to improve the recognition performance of the existing face recognition technology on the masked faces. Most current advanced face recognition approaches are designed based on deep learning, which depend on a large number of face samples. However, at present, there are no publicly available masked face recognition datasets. To this end, this work proposes three types of masked face datasets, including Masked Face Detection Dataset (MFDD), Real-world Masked Face Recognition Dataset (RMFRD) and Simulated Masked Face Recognition Dataset (SMFRD). Among them, to the best of our knowledge, RMFRD is currently theworld's largest real-world masked face dataset. These datasets are freely available to industry and academia, based on which various applications on masked faces can be developed. The multi-granularity masked face recognition model we developed achieves 95% accuracy, exceeding the results reported by the industry. Our datasets are available at: https://github.com/X-zhangyang/Real-World-Masked-Face-Dataset.