TL;DR
This paper introduces a novel unsupervised method for learning facial representations by enforcing cycle-consistency constraints on facial motion and identity, enabling effective disentanglement of facial features from unlabeled images.
Contribution
It proposes a new cycle-consistency based framework for unsupervised facial representation learning that disentangles identity and expression features without labeled data.
Findings
Competitive performance on facial expression recognition
Effective disentanglement of facial identity and expression
Applicability to face frontalization and image translation
Abstract
Faces manifest large variations in many aspects, such as identity, expression, pose, and face styling. Therefore, it is a great challenge to disentangle and extract these characteristics from facial images, especially in an unsupervised manner. In this work, we introduce cycle-consistency in facial characteristics as free supervisory signal to learn facial representations from unlabeled facial images. The learning is realized by superimposing the facial motion cycle-consistency and identity cycle-consistency constraints. The main idea of the facial motion cycle-consistency is that, given a face with expression, we can perform de-expression to a neutral face via the removal of facial motion and further perform re-expression to reconstruct back to the original face. The main idea of the identity cycle-consistency is to exploit both de-identity into mean face by depriving the given neutral…
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