论文标题
3D辅助数据增强,以实现强大的面部理解
3D-Aided Data Augmentation for Robust Face Understanding
论文作者
论文摘要
数据增强在缩小数据差距并降低人类注释的成本方面非常有效,尤其是对于地面真相标签困难且昂贵的任务。在面部识别中,面部图像的大姿势和照明变化一直是性能降解的关键因素。但是,在这些充满挑战的情况下,人的各种面部理解任务的注释,包括面部标志性的本地化,面部属性分类和面部识别是高昂的成本。因此,希望对这些情况执行数据增强。但是,图像域上的简单2D数据扩展技术无法满足这些具有挑战性的情况的要求。因此,3D面部建模,尤其是单个图像3D面部建模,它是可行的解决方案,对于基于2D的数据增强,这些具有挑战性的条件。为此,我们提出了一种方法,该方法通过通过3D面部建模从多个观点产生现实的3D增强图像,每种图像与几何准确的面部标志,属性和身份信息相关。实验表明,所提出的3D数据增强方法显着提高了各种面部理解任务的性能和鲁棒性,同时在多个基准上实现了最新的图案。
Data augmentation has been highly effective in narrowing the data gap and reducing the cost for human annotation, especially for tasks where ground truth labels are difficult and expensive to acquire. In face recognition, large pose and illumination variation of face images has been a key factor for performance degradation. However, human annotation for the various face understanding tasks including face landmark localization, face attributes classification and face recognition under these challenging scenarios are highly costly to acquire. Therefore, it would be desirable to perform data augmentation for these cases. But simple 2D data augmentation techniques on the image domain are not able to satisfy the requirement of these challenging cases. As such, 3D face modeling, in particular, single image 3D face modeling, stands a feasible solution for these challenging conditions beyond 2D based data augmentation. To this end, we propose a method that produces realistic 3D augmented images from multiple viewpoints with different illumination conditions through 3D face modeling, each associated with geometrically accurate face landmarks, attributes and identity information. Experiments demonstrate that the proposed 3D data augmentation method significantly improves the performance and robustness of various face understanding tasks while achieving state-of-arts on multiple benchmarks.