论文标题
我们是否需要最新面对面身份验证的深度?
Do We Need Depth in State-Of-The-Art Face Authentication?
论文作者
论文摘要
某些面部识别方法旨在利用从深度传感器中提取的几何信息来克服基于单像的识别技术的弱点。但是,对深度剖面的准确获取是一个昂贵且具有挑战性的过程。在这里,我们介绍了一种新颖的方法,该方法学会了可以从立体相机系统中识别面孔,而无需明确计算面部表面或深度图。原始面部立体声图像以及提取面部图像中的位置,使建议的CNN可以改善识别任务,同时避免明确处理面部的几何结构。这样,我们将单个图像的身份身份认证的简单性和成本效率保持在同时享受几何数据的好处而无需明确重构。我们证明,建议的方法在大规模基准上优于现有的单图像和明确深度的方法,甚至能够识别欺骗攻击。我们还提供了一项消融研究,该研究表明,建议的方法使用左右图像中的面部位置来编码可改善整体性能的信息特征。
Some face recognition methods are designed to utilize geometric information extracted from depth sensors to overcome the weaknesses of single-image based recognition technologies. However, the accurate acquisition of the depth profile is an expensive and challenging process. Here, we introduce a novel method that learns to recognize faces from stereo camera systems without the need to explicitly compute the facial surface or depth map. The raw face stereo images along with the location in the image from which the face is extracted allow the proposed CNN to improve the recognition task while avoiding the need to explicitly handle the geometric structure of the face. This way, we keep the simplicity and cost efficiency of identity authentication from a single image, while enjoying the benefits of geometric data without explicitly reconstructing it. We demonstrate that the suggested method outperforms both existing single-image and explicit depth based methods on large-scale benchmarks, and even capable of recognize spoofing attacks. We also provide an ablation study that shows that the suggested method uses the face locations in the left and right images to encode informative features that improve the overall performance.