215 research outputs found
Dynamic attention-controlled cascaded shape regression exploiting training data augmentation and fuzzy-set sample weighting
We present a new Cascaded Shape Regression (CSR) architecture, namely Dynamic Attention-Controlled CSR (DAC-CSR), for robust facial landmark detection on unconstrained faces. Our DAC-CSR divides facial landmark detection into three cascaded sub-tasks: face bounding box refinement, general CSR and attention-controlled CSR. The first two stages refine initial face bounding boxes and output intermediate facial landmarks. Then, an online dynamic model selection method is used to choose appropriate domain-specific CSRs for further landmark refinement. The key innovation of our DAC-CSR is the fault-tolerant mechanism, using fuzzy set sample weighting, for attentioncontrolled domain-specific model training. Moreover, we advocate data augmentation with a simple but effective 2D profile face generator, and context-aware feature extraction for better facial feature representation. Experimental results obtained on challenging datasets demonstrate the merits of our DAC-CSR over the state-of-the-art methods
Evaluation of dense 3D reconstruction from 2D face images in the wild
This paper investigates the evaluation of dense 3D face reconstruction from a single 2D image in the wild. To this end, we organise a competition that provides a new benchmark dataset that contains 2000 2D facial images of 135 subjects as well as their 3D ground truth face scans. In contrast to previous competitions or challenges, the aim of this new benchmark dataset is to evaluate the accuracy of a 3D dense face reconstruction algorithm using real, accurate and high-resolution 3D ground truth face scans. In addition to the dataset, we provide a standard protocol as well as a Python script for the evaluation. Last, we report the results obtained by three state-of-the-art 3D face reconstruction systems on the new benchmark dataset. The competition is organised along with the 2018 13th IEEE Conference on Automatic Face & Gesture Recognition
AnchorFace: An Anchor-based Facial Landmark Detector Across Large Poses
Facial landmark localization aims to detect the predefined points of human
faces, and the topic has been rapidly improved with the recent development of
neural network based methods. However, it remains a challenging task when
dealing with faces in unconstrained scenarios, especially with large pose
variations. In this paper, we target the problem of facial landmark
localization across large poses and address this task based on a
split-and-aggregate strategy. To split the search space, we propose a set of
anchor templates as references for regression, which well addresses the large
variations of face poses. Based on the prediction of each anchor template, we
propose to aggregate the results, which can reduce the landmark uncertainty due
to the large poses. Overall, our proposed approach, named AnchorFace, obtains
state-of-the-art results with extremely efficient inference speed on four
challenging benchmarks, i.e. AFLW, 300W, Menpo, and WFLW dataset. Code will be
available at https://github.com/nothingelse92/AnchorFace.Comment: To appear in AAAI 202
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