DocumentCode
1766547
Title
Cascaded Collaborative Regression for Robust Facial Landmark Detection Trained Using a Mixture of Synthetic and Real Images With Dynamic Weighting
Author
Zhen-Hua Feng ; Guosheng Hu ; Kittler, Josef ; Christmas, William ; Xiao-Jun Wu
Author_Institution
Sch. of Internet of Things, Jiangnan Univ., Wuxi, China
Volume
24
Issue
11
fYear
2015
fDate
Nov. 2015
Firstpage
3425
Lastpage
3440
Abstract
A large amount of training data is usually crucial for successful supervised learning. However, the task of providing training samples is often time-consuming, involving a considerable amount of tedious manual work. In addition, the amount of training data available is often limited. As an alternative, in this paper, we discuss how best to augment the available data for the application of automatic facial landmark detection. We propose the use of a 3D morphable face model to generate synthesized faces for a regression-based detector training. Benefiting from the large synthetic training data, the learned detector is shown to exhibit a better capability to detect the landmarks of a face with pose variations. Furthermore, the synthesized training data set provides accurate and consistent landmarks automatically as compared to the landmarks annotated manually, especially for occluded facial parts. The synthetic data and real data are from different domains; hence the detector trained using only synthesized faces does not generalize well to real faces. To deal with this problem, we propose a cascaded collaborative regression algorithm, which generates a cascaded shape updater that has the ability to overcome the difficulties caused by pose variations, as well as achieving better accuracy when applied to real faces. The training is based on a mix of synthetic and real image data with the mixing controlled by a dynamic mixture weighting schedule. Initially, the training uses heavily the synthetic data, as this can model the gross variations between the various poses. As the training proceeds, progressively more of the natural images are incorporated, as these can model finer detail. To improve the performance of the proposed algorithm further, we designed a dynamic multi-scale local feature extraction method, which captures more informative local features for detector training. An extensive evaluation on both controlled and uncontrolled face data sets demonstrates the me- it of the proposed algorithm.
Keywords
face recognition; feature extraction; image capture; learning (artificial intelligence); pose estimation; regression analysis; 3D morphable face model; automatic facial landmark detection; cascaded collaborative regression-based detector training; cascaded shape updater; dynamic mixture weighting schedule; dynamic multiscale local feature extraction method; feature capture; natural image; pose variation; supervised learning; synthetic image mixture; training data; Detectors; Face; Feature extraction; Shape; Solid modeling; Three-dimensional displays; Training; 3D morphable model; Facial landmark detection; cascaded collaborative regression; dynamic multi-scale local feature extraction;
fLanguage
English
Journal_Title
Image Processing, IEEE Transactions on
Publisher
ieee
ISSN
1057-7149
Type
jour
DOI
10.1109/TIP.2015.2446944
Filename
7126999
Link To Document