In the application of face recognition, eyeglasses could significantly degrade the recognition accuracy. A feasible method is to collect large-scale face images with eyeglasses for training deep learning methods. However, it is difficult to collect the images with and without glasses of the same identity, so that it is difficult to optimize the intra-variations caused by eyeglasses. In this paper, we propose to address this problem in a virtual synthesis manner. The high-fidelity face images with eyeglasses are synthesized based on 3D face model and 3D eyeglasses. Models based on deep learning methods are then trained on the synthesized eyeglass face dataset, achieving better performance than previous ones. Experiments on the real face database validate the effectiveness of our synthesized data for improving eyeglass face recognition performance.
翻译:在应用面部识别时,眼镜可以大大降低辨识准确度,一种可行的方法是收集大型面部图像,用眼镜进行深层学习方法的培训,但是,很难用和不用同一特性的眼镜来收集图像,因此很难优化眼镜造成的内部差异。在本文件中,我们提议以虚拟合成的方式解决这一问题。高虚伪的面部图像以3D面部模型和3D眼镜合成。然后,对基于深层学习方法的模型进行合成眼镜数据集培训,取得比以往更好的性能。在真实面部数据库上进行的实验证实了我们综合数据在提高眼镜面部识别性能方面的有效性。