模态自适应人脸识别的领域私有和不可知特征

Ying Xu, Lei Zhang, Qingyan Duan
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引用次数: 2

摘要

由于模态差异大且跨模态样本不足,异构人脸识别是一项具有挑战性的任务。现有的研究主要集中在判别特征变换、度量学习和跨模态人脸合成等方面。然而,跨模态人脸总是由域(模态)和身份信息耦合的事实很少受到关注。因此,如何学习和利用领域私有特征和领域不可知特征进行模态自适应人脸识别是本研究的重点。具体而言,本文提出了一种包含解纠缠表示模块(DRM)、特征融合模块(FFM)和自适应惩罚度量(APM)学习会话的特征聚合网络(FAN)。首先,在DRM中,专门设计了两个子网,即领域专用网络和领域不可知网络,分别用于学习模态特征和身份特征。其次,在FFM中,将身份特征与域特征融合,实现跨模态的双向身份特征变换,在很大程度上进一步解开了模态信息与身份信息的纠缠。第三,考虑到跨模态数据集中存在易对和难对分布不平衡,增加了模型偏差的风险,提出了基于自适应硬对惩罚的恒等保持制导度量学习方法。所提出的APM还保证了跨模态的类内紧密性和类间分离性。在跨模态人脸数据集上的大量实验表明,我们的FAN优于SOTA方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Domain Private and Agnostic Feature for Modality Adaptive Face Recognition
Heterogeneous face recognition is a challenging task due to the large modality discrepancy and insufficient cross-modal samples. Most existing works focus on discriminative feature transformation, metric learning and cross-modal face synthesis. However, the fact that cross-modal faces are always coupled by domain (modality) and identity information has received little attention. Therefore, how to learn and utilize the domain-private feature and domain-agnostic feature for modality adaptive face recognition is the focus of this work. Specifically, this paper proposes a Feature Aggregation Network (FAN), which includes disentangled representation module (DRM), feature fusion module (FFM) and adaptive penalty metric (APM) learning session. First, in DRM, two subnetworks, i.e. domain-private network and domain-agnostic network are specially designed for learning modality features and identity features, respectively. Second, in FFM, the identity features are fused with domain features to achieve cross-modal bidirectional identity feature transformation, which, to a large extent, further disentangles the modality information and identity information. Third, considering that the distribution imbalance between easy and hard pairs exists in cross-modal datasets, which increases the risk of model bias, the identity preserving guided metric learning with adaptive hard pairs penalization is proposed in our FAN. The proposed APM also guarantees the cross-modality intra-class compactness and inter-class separation. Extensive experiments on benchmark cross-modal face datasets show that our FAN outperforms SOTA methods.
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