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Proceedings ArticleDOI

Disentangled Representation Learning GAN for Pose-Invariant Face Recognition

TLDR
Quantitative and qualitative evaluation on both controlled and in-the-wild databases demonstrate the superiority of DR-GAN over the state of the art.
Abstract
The large pose discrepancy between two face images is one of the key challenges in face recognition. Conventional approaches for pose-invariant face recognition either perform face frontalization on, or learn a pose-invariant representation from, a non-frontal face image. We argue that it is more desirable to perform both tasks jointly to allow them to leverage each other. To this end, this paper proposes Disentangled Representation learning-Generative Adversarial Network (DR-GAN) with three distinct novelties. First, the encoder-decoder structure of the generator allows DR-GAN to learn a generative and discriminative representation, in addition to image synthesis. Second, this representation is explicitly disentangled from other face variations such as pose, through the pose code provided to the decoder and pose estimation in the discriminator. Third, DR-GAN can take one or multiple images as the input, and generate one unified representation along with an arbitrary number of synthetic images. Quantitative and qualitative evaluation on both controlled and in-the-wild databases demonstrate the superiority of DR-GAN over the state of the art.

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Proceedings ArticleDOI

Pareidolia Face Reenactment

TL;DR: Wang et al. as discussed by the authors proposed to decompose the reenactment into three catenate processes: shape modeling, motion transfer and texture synthesis, and introduce three crucial components, i.e., Parametric Shape Modeling, Expansionary Motion Transfer and Unsupervised Texture Synthesizer, to overcome the remarkably variances on pareidolia faces.
Posted Content

DotFAN: A Domain-transferred Face Augmentation Network for Pose and Illumination Invariant Face Recognition.

TL;DR: Experiments show that DotFAN is beneficial for augmenting small face datasets to improve their within-class diversity so that a better face recognition model can be learned from the augmented dataset.
Posted Content

Learning Disentangled Representations with Latent Variation Predictability

TL;DR: In this paper, the authors define the variation predictability of latent disentangled representations and develop an evaluation metric that does not rely on the ground-truth generative factors to measure the disentanglement of latent representations.
Journal ArticleDOI

Adversarial learning for viewpoints invariant 3D human pose estimation

TL;DR: An adversarial learning framework is proposed, which can learn invariant human pose latent from 3D annotated datasets to optimize the estimation of monocular images with only 2D annotations and adds a viewpoints invariant module to automatically regulate observation viewpoints for generated 3D pose.
Proceedings ArticleDOI

Is Pose Really Solved? A Frontalization Study On Off-Angle Face Matching

TL;DR: This study presents a simple and practical method to handle pose variation in face recognition pipelines designed to deal with extremely off-angle faces by ignoring the half of the face with any self-occlusion, which allows the models to be highly robust to pose.
References
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Proceedings Article

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Journal ArticleDOI

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Journal ArticleDOI

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Proceedings ArticleDOI

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Posted Content

Conditional Generative Adversarial Nets

Mehdi Mirza, +1 more
- 06 Nov 2014 - 
TL;DR: The conditional version of generative adversarial nets is introduced, which can be constructed by simply feeding the data, y, to the generator and discriminator, and it is shown that this model can generate MNIST digits conditioned on class labels.
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