SymFace: Additional Facial Symmetry Loss for Deep Face Recognition
Pritesh Prakash, Koteswar Rao Jerripothula, Ashish Jacob Sam, Prinsh, Kumar Singh, S Umamaheswaran

TL;DR
This paper introduces SymFace, a novel loss function leveraging facial symmetry by penalizing disparities between embeddings of split face halves, significantly improving face recognition accuracy across various architectures.
Contribution
It proposes a symmetry-based loss function that enhances face verification by exploiting natural facial symmetry, leading to state-of-the-art results.
Findings
Outperforms baseline models across architectures
Reduces effects of asymmetry due to expression and lighting
Achieves state-of-the-art face recognition accuracy
Abstract
Over the past decade, there has been a steady advancement in enhancing face recognition algorithms leveraging advanced machine learning methods. The role of the loss function is pivotal in addressing face verification problems and playing a game-changing role. These loss functions have mainly explored variations among intra-class or inter-class separation. This research examines the natural phenomenon of facial symmetry in the face verification problem. The symmetry between the left and right hemi faces has been widely used in many research areas in recent decades. This paper adopts this simple approach judiciously by splitting the face image vertically into two halves. With the assumption that the natural phenomena of facial symmetry can enhance face verification methodology, we hypothesize that the two output embedding vectors of split faces must project close to each other in the…
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Taxonomy
TopicsFace recognition and analysis
