论文标题
专家学习的自适应混合物,用于概括性抗刺激
Adaptive Mixture of Experts Learning for Generalizable Face Anti-Spoofing
论文作者
论文摘要
随着各种面部表现攻击不断出现,基于域概括(DG)的面部抗刺激(FAS)方法引起了人们的注意。现有的基于DG的FAS方法始终捕获用于概括各种看不见的域的域不变特征。但是,他们忽略了单个源域的歧视性特征和未见域的不同领域特定信息,并且训练有素的模型不足以适应各种看不见的领域。为了解决这个问题,我们提出了专家学习(AMEL)框架的自适应混合物,该框架利用了特定于域的信息以适应性地在可见的源域之间建立链接和看不见的目标域,以进一步改善概括。具体而言,特定领域的专家(DSE)旨在研究歧视性和独特的域特异性特征,以补充共同的域名特征。此外,提出了动态专家聚合(DEA),以根据与看不见的目标域相关的域与每个源专家的互补信息自适应地汇总信息。这些模块与元学习结合,合作,为各种看不见的目标域而适应有意义的特定领域信息。广泛的实验和可视化证明了我们对最先进竞争者的方法的有效性。
With various face presentation attacks emerging continually, face anti-spoofing (FAS) approaches based on domain generalization (DG) have drawn growing attention. Existing DG-based FAS approaches always capture the domain-invariant features for generalizing on the various unseen domains. However, they neglect individual source domains' discriminative characteristics and diverse domain-specific information of the unseen domains, and the trained model is not sufficient to be adapted to various unseen domains. To address this issue, we propose an Adaptive Mixture of Experts Learning (AMEL) framework, which exploits the domain-specific information to adaptively establish the link among the seen source domains and unseen target domains to further improve the generalization. Concretely, Domain-Specific Experts (DSE) are designed to investigate discriminative and unique domain-specific features as a complement to common domain-invariant features. Moreover, Dynamic Expert Aggregation (DEA) is proposed to adaptively aggregate the complementary information of each source expert based on the domain relevance to the unseen target domain. And combined with meta-learning, these modules work collaboratively to adaptively aggregate meaningful domain-specific information for the various unseen target domains. Extensive experiments and visualizations demonstrate the effectiveness of our method against the state-of-the-art competitors.