论文标题

Celeba-Spoof:大型面部反欺骗数据集,带有丰富的注释

CelebA-Spoof: Large-Scale Face Anti-Spoofing Dataset with Rich Annotations

论文作者

Zhang, Yuanhan, Yin, Zhenfei, Li, Yidong, Yin, Guojun, Yan, Junjie, Shao, Jing, Liu, Ziwei

论文摘要

随着面部相互作用系统的普遍部署,这些系统的安全性和可靠性成为一个关键问题,并进行了大量研究工作。其中,面部反欺骗是一个重要领域,其目标是确定呈现的面孔是活的还是欺骗的。尽管已经取得了令人鼓舞的进步,但现有作品仍然难以处理复杂的欺骗攻击并推广到现实世界中的情况。主要原因是当前的抗爆炸数据集的数量和多样性都受到限制。为了克服这些障碍,我们贡献了一个大规模的抗烟数据集Celeba-Spoof,具有以下吸引人的特性:1)数量:Celeba-Spoof由10,177名受试者的625,537张照片组成,比现有数据集大大更大。 2)多样性:欺骗图像是从8个场景(2个环境 * 4照明条件)中捕获的,具有10多个传感器。 3)注释丰富度:Celeba-Spoof包含10个欺骗类型注释,以及从原始的Celeba数据集继承的40个属性注释。配备了Celeba-Spoof,我们在统一的多任务框架,辅助信息嵌入网络(AENET)中仔细基准了现有的方法,并揭示了几种有价值的观察结果。

As facial interaction systems are prevalently deployed, security and reliability of these systems become a critical issue, with substantial research efforts devoted. Among them, face anti-spoofing emerges as an important area, whose objective is to identify whether a presented face is live or spoof. Though promising progress has been achieved, existing works still have difficulty in handling complex spoof attacks and generalizing to real-world scenarios. The main reason is that current face anti-spoofing datasets are limited in both quantity and diversity. To overcome these obstacles, we contribute a large-scale face anti-spoofing dataset, CelebA-Spoof, with the following appealing properties: 1) Quantity: CelebA-Spoof comprises of 625,537 pictures of 10,177 subjects, significantly larger than the existing datasets. 2) Diversity: The spoof images are captured from 8 scenes (2 environments * 4 illumination conditions) with more than 10 sensors. 3) Annotation Richness: CelebA-Spoof contains 10 spoof type annotations, as well as the 40 attribute annotations inherited from the original CelebA dataset. Equipped with CelebA-Spoof, we carefully benchmark existing methods in a unified multi-task framework, Auxiliary Information Embedding Network (AENet), and reveal several valuable observations.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源