During the COVID-19 coronavirus epidemic, almost everyone wears a facial mask, which poses a huge challenge to deep face recognition. In this workshop, we organize Masked Face Recognition (MFR) challenge and focus on bench-marking deep face recognition methods under the existence of facial masks. In the MFR challenge, there are two main tracks: the InsightFace track and the WebFace260M track. For the InsightFace track, we manually collect a large-scale masked face test set with 7K identities. In addition, we also collect a children test set including 14K identities and a multi-racial test set containing 242K identities. By using these three test sets, we build up an online model testing system, which can give a comprehensive evaluation of face recognition models. To avoid data privacy problems, no test image is released to the public. As the challenge is still under-going, we will keep on updating the top-ranked solutions as well as this report on the arxiv.
翻译:在COVID-19 Corona病毒流行期间,几乎每个人都戴着面部面罩,这给深刻的面部识别带来巨大的挑战。在这个研讨会上,我们组织了面部识别(MFR)挑战,并侧重于在面部面部识别(MFR)下确定深面部识别方法。在MFR挑战中,有两个主要轨道:InsightFace轨道和WebFace260M轨道。在InsightFace轨道上,我们手动收集了带有7K身份的大型面部蒙面测试。此外,我们还收集了一套儿童测试套,包括14K身份和包含242K身份的多种族测试套。我们通过使用这三个测试套,建立了一个在线示范测试系统,可以对面部识别模型进行全面评估。为了避免数据隐私问题,没有向公众发布测试图像。随着挑战的继续,我们将不断更新最高级的解决方案以及这份关于Arxiv的报告。