4 research outputs found
CATFace: Cross-Attribute-Guided Transformer with Self-Attention Distillation for Low-Quality Face Recognition
Although face recognition (FR) has achieved great success in recent years, it
is still challenging to accurately recognize faces in low-quality images due to
the obscured facial details. Nevertheless, it is often feasible to make
predictions about specific soft biometric (SB) attributes, such as gender, and
baldness even in dealing with low-quality images. In this paper, we propose a
novel multi-branch neural network that leverages SB attribute information to
boost the performance of FR. To this end, we propose a cross-attribute-guided
transformer fusion (CATF) module that effectively captures the long-range
dependencies and relationships between FR and SB feature representations. The
synergy created by the reciprocal flow of information in the dual
cross-attention operations of the proposed CATF module enhances the performance
of FR. Furthermore, we introduce a novel self-attention distillation framework
that effectively highlights crucial facial regions, such as landmarks by
aligning low-quality images with those of their high-quality counterparts in
the feature space. The proposed self-attention distillation regularizes our
network to learn a unified quality-invariant feature representation in
unconstrained environments. We conduct extensive experiments on various FR
benchmarks varying in quality. Experimental results demonstrate the superiority
of our FR method compared to state-of-the-art FR studies.Comment: Accepted in IEEE Transactions on Biometrics, Behavior, and Identity
Science (T-BIOM), 202
Towards Generalizable Morph Attack Detection with Consistency Regularization
Though recent studies have made significant progress in morph attack
detection by virtue of deep neural networks, they often fail to generalize well
to unseen morph attacks. With numerous morph attacks emerging frequently,
generalizable morph attack detection has gained significant attention. This
paper focuses on enhancing the generalization capability of morph attack
detection from the perspective of consistency regularization. Consistency
regularization operates under the premise that generalizable morph attack
detection should output consistent predictions irrespective of the possible
variations that may occur in the input space. In this work, to reach this
objective, two simple yet effective morph-wise augmentations are proposed to
explore a wide space of realistic morph transformations in our consistency
regularization. Then, the model is regularized to learn consistently at the
logit as well as embedding levels across a wide range of morph-wise augmented
images. The proposed consistency regularization aligns the abstraction in the
hidden layers of our model across the morph attack images which are generated
from diverse domains in the wild. Experimental results demonstrate the superior
generalization and robustness performance of our proposed method compared to
the state-of-the-art studies.Comment: Accepted to the IEEE International Joint Conference on Biometrics
(IJCB), 202
AAFACE: Attribute-aware Attentional Network for Face Recognition
In this paper, we present a new multi-branch neural network that
simultaneously performs soft biometric (SB) prediction as an auxiliary modality
and face recognition (FR) as the main task. Our proposed network named AAFace
utilizes SB attributes to enhance the discriminative ability of FR
representation. To achieve this goal, we propose an attribute-aware attentional
integration (AAI) module to perform weighted integration of FR with SB feature
maps. Our proposed AAI module is not only fully context-aware but also capable
of learning complex relationships between input features by means of the
sequential multi-scale channel and spatial sub-modules. Experimental results
verify the superiority of our proposed network compared with the
state-of-the-art (SoTA) SB prediction and FR methods.Comment: Accepted to IEEE International Conference on Image
Processing (ICIP 2023) as an oral presentatio
