Face recognition now requires a large number of labelled masked face images in the era of this unprecedented COVID-19 pandemic. Unfortunately, the rapid spread of the virus has left us little time to prepare for such dataset in the wild. To circumvent this issue, we present a 3D model-based approach called WearMask3D for augmenting face images of various poses to the masked face counterparts. Our method proceeds by first fitting a 3D morphable model on the input image, second overlaying the mask surface onto the face model and warping the respective mask texture, and last projecting the 3D mask back to 2D. The mask texture is adapted based on the brightness and resolution of the input image. By working in 3D, our method can produce more natural masked faces of diverse poses from a single mask texture. To compare precisely between different augmentation approaches, we have constructed a dataset comprising masked and unmasked faces with labels called MFW-mini. Experimental results demonstrate WearMask3D produces more realistic masked faces, and utilizing these images for training leads to state-of-the-art recognition accuracy for masked faces.
翻译:在这种前所未有的COVID-19大流行的时代,现在需要大量贴有标签的面罩图象。 不幸的是,病毒的迅速传播使我们没有多少时间来准备野外的这种数据集。 为回避这一问题,我们提出了一个3D模型法,称为WearMask3D, 用于增加面罩面罩图象的面罩图象,以扩大面罩面罩图象对面面面罩图象。我们的方法是首先在输入图像上安装3D型3D可变模型,第二将面罩表面覆盖在面罩模型上,并扭曲相应的面具纹理,最后将3D面具图象投射回2D。 面具纹理根据输入图像的亮度和分辨率进行调整。 通过在 3D 中工作,我们的方法可以产生一个面罩面罩形的更自然面罩面孔。 为了精确比较不同的放大方法,我们用称为MFW-mini的标签构建了一个由面罩面罩和无面孔面罩面的数据集。 实验结果显示WarMask3D产生更现实的面罩脸, 并且利用这些图象进行训练, 导致对面罩面部的状态的精确度的识别。