2014
DOI: 10.1007/978-3-319-10605-2_1
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Coarse-to-Fine Auto-Encoder Networks (CFAN) for Real-Time Face Alignment

Abstract: Accurate face alignment is a vital prerequisite step for most face perception tasks such as face recognition, facial expression analysis and non-realistic face re-rendering. It can be formulated as the nonlinear inference of the facial landmarks from the detected face region. Deep network seems a good choice to model the nonlinearity, but it is nontrivial to apply it directly. In this paper, instead of a straightforward application of deep network, we propose a Coarse-to-Fine Auto-encoder Networks (CFAN) appro… Show more

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Cited by 351 publications
(337 citation statements)
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References 31 publications
(79 reference statements)
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“…Ren et al [33] build local binary features by learning regression random forest for each landmark independently, and then learn a global cascaded linear regressor with pre-built binary features. Deep Neural Networks [16,24,25] have also been studied for face landmark detection. DNNs-based methods fuse the feature description and networking training in a unified framework, but it is still a very hard task to tune many free parameters.…”
Section: Cascaded Regression To Face Alignmentmentioning
confidence: 99%
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“…Ren et al [33] build local binary features by learning regression random forest for each landmark independently, and then learn a global cascaded linear regressor with pre-built binary features. Deep Neural Networks [16,24,25] have also been studied for face landmark detection. DNNs-based methods fuse the feature description and networking training in a unified framework, but it is still a very hard task to tune many free parameters.…”
Section: Cascaded Regression To Face Alignmentmentioning
confidence: 99%
“…The choice and learning of shape-indexed features are also studied [15][16][17]. A series of regression methods have been employed into cascaded regression framework to deal with over-fitting and local minima problems in the wild condition, including ridge regression [18], Support Vector [19], Gaussian process [20,21], Random Forest voting [14,22,23], Deep Neural Nets [16,24,25], and project-out cascaded regression [26].…”
Section: Introductionmentioning
confidence: 99%
“…Zhang and Chen [2] has presented a paradigm of distributed learning for Restricted Boltzmann Machines (RBMs) and also an algorithm of a back propagation (BP) by using Map Reduce and a programming model parallel. The author has gone through the Deep Belief Nets (DBNs) and RBNs.…”
Section: Literature Reviewmentioning
confidence: 99%
“…Exclusively using the back propagation along with the gradient-descent based optimization is proved to be slow and sometimes halts in deep networks, as noted by James Martens et al [1]. Hence greedy layer wise unsupervised algorithm is considered for training, as suggested by Hinton et al [2], to train the network starting from hidden layer 1. Finally, back propagation is only used to fine-tune the network from the inverse side of shrouded layers and proceed till the principal concealed layer.…”
Section: ____________________________________________________________mentioning
confidence: 99%
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