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Deep Alignment Network: A Convolutional Neural Network for Robust Face Alignment

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TLDR
The use of entire face images rather than patches allows DAN to handle face images with large variation in head pose and difficult initializations, and reduces the state-of-the-art failure rate by up to 70%.
Abstract
In this paper, we propose Deep Alignment Network (DAN), a robust face alignment method based on a deep neural network architecture. DAN consists of multiple stages, where each stage improves the locations of the facial landmarks estimated by the previous stage. Our method uses entire face images at all stages, contrary to the recently proposed face alignment methods that rely on local patches. This is possible thanks to the use of landmark heatmaps which provide visual information about landmark locations estimated at the previous stages of the algorithm. The use of entire face images rather than patches allows DAN to handle face images with large variation in head pose and difficult initializations. An extensive evaluation on two publicly available datasets shows that DAN reduces the state-of-the-art failure rate by up to 70%. Our method has also been submitted for evaluation as part of the Menpo challenge.

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Citations
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Journal ArticleDOI

Deep High-Resolution Representation Learning for Visual Recognition

TL;DR: The High-Resolution Network (HRNet) as mentioned in this paper maintains high-resolution representations through the whole process by connecting the high-to-low resolution convolution streams in parallel and repeatedly exchanging the information across resolutions.
Proceedings ArticleDOI

FSRNet: End-to-End Learning Face Super-Resolution with Facial Priors

TL;DR: Zhang et al. as discussed by the authors proposed a deep end-to-end trainable face super-resolution network (FSRNet), which makes use of the geometry prior, i.e., facial landmark heatmaps and parsing maps, to super-resolve very low-resolution (LR) face images without well-aligned requirement.
Proceedings ArticleDOI

Adaptive Wing Loss for Robust Face Alignment via Heatmap Regression

TL;DR: A novel loss function is proposed, named Adaptive Wing loss, that is able to adapt its shape to different types of ground truth heatmap pixels, that penalizes loss more on foreground pixels while less on background pixels.
Proceedings ArticleDOI

The Menpo Facial Landmark Localisation Challenge: A Step Towards the Solution

TL;DR: A new benchmark for facial landmark localisation, contrary to the previous benchmarks, contains facial images both in (nearly) frontal, as well as in profile pose (annotated with a different markup of facial landmarks).
Book ChapterDOI

Whole-Body Human Pose Estimation in the Wild.

TL;DR: COCO-WholeBody as discussed by the authors extends COCO dataset with whole-body annotations, including 133 dense landmarks with 68 on the face, 42 on hands and 23 on the body and feet.
References
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Journal ArticleDOI

Automatic Analysis of Facial Affect: A Survey of Registration, Representation, and Recognition

TL;DR: This paper provides a comprehensive analysis of facial representations by uncovering their advantages and limitations, and elaborate on the type of information they encode and how they deal with the key challenges of illumination variations, registration errors, head-pose variations, occlusions, and identity bias.
Proceedings ArticleDOI

Robust Discriminative Response Map Fitting with Constrained Local Models

TL;DR: A novel discriminative regression based approach for the Constrained Local Models (CLMs) framework, referred to as the Discriminative Response Map Fitting (DRMF) method, which shows impressive performance in the generic face fitting scenario.
Proceedings ArticleDOI

Face alignment by coarse-to-fine shape searching

TL;DR: A novel face alignment framework based on coarse-to-fine shape searching that prevents the final solution from being trapped in local optima due to poor initialisation, and improves the robustness in coping with large pose variations.
Proceedings ArticleDOI

A Semi-automatic Methodology for Facial Landmark Annotation

TL;DR: This is the first attempt to create a tool suitable for annotating massive facial databases, and the tool for creating annotations for MultiPIE, XM2VTS, AR, and FRGC Ver. 2 databases is employed.
Proceedings ArticleDOI

Mnemonic Descent Method: A Recurrent Process Applied for End-to-End Face Alignment

TL;DR: This paper proposes a combined and jointly trained convolutional recurrent neural network architecture that allows the training of an end-to-end to system that attempts to alleviate the drawbacks of cascaded regression.
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