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 non-trivial 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) approach, which cascades a few successive Stacked Auto-encoder Networks (SANs). Specifically, the first SAN predicts the landmarks quickly but accurately enough as a preliminary, by taking as input a low-resolution version of the...
This paper presents the Attentional Combination Network (ACN), which is a highly accurate face align...
Face alignment is a crucial step in multiple face analysis and recognition tasks. The current state-...
Recent advancement in unsupervised and transfer learning methods of deep learning networks has seen ...
Abstract. Accurate face alignment is a vital prerequisite step for most face perception tasks such a...
Abstract. Facial landmark localization plays an important role for many computer vision tasks, e.g.,...
We propose a face alignment method that uses a deep neural network employing both local feature lear...
Face alignment has been applied widely in the field of computer vision, which is still a very challe...
This paper investigates how far a very deep neural network is from attaining close to saturating per...
This paper presents a highly efficient, very accurate re-gression approach for face alignment. Our a...
In the presented research two Deep Neural Network (DNN) models for face image analysis were develope...
Face alignment is an important feature for most facial images related algorithms such as expression...
Face alignment is one of the fundamental steps in a vast number of tasks of high economical and soci...
Super-resolution (SR) and landmark localization of tiny faces are highly correlated tasks. On the on...
Aiming at the low accuracy of large-pose face alignment, a cascade network based on truncated Alexne...
Face alignment is widely used in high-level face analysis applications, such as human activity recog...
This paper presents the Attentional Combination Network (ACN), which is a highly accurate face align...
Face alignment is a crucial step in multiple face analysis and recognition tasks. The current state-...
Recent advancement in unsupervised and transfer learning methods of deep learning networks has seen ...
Abstract. Accurate face alignment is a vital prerequisite step for most face perception tasks such a...
Abstract. Facial landmark localization plays an important role for many computer vision tasks, e.g.,...
We propose a face alignment method that uses a deep neural network employing both local feature lear...
Face alignment has been applied widely in the field of computer vision, which is still a very challe...
This paper investigates how far a very deep neural network is from attaining close to saturating per...
This paper presents a highly efficient, very accurate re-gression approach for face alignment. Our a...
In the presented research two Deep Neural Network (DNN) models for face image analysis were develope...
Face alignment is an important feature for most facial images related algorithms such as expression...
Face alignment is one of the fundamental steps in a vast number of tasks of high economical and soci...
Super-resolution (SR) and landmark localization of tiny faces are highly correlated tasks. On the on...
Aiming at the low accuracy of large-pose face alignment, a cascade network based on truncated Alexne...
Face alignment is widely used in high-level face analysis applications, such as human activity recog...
This paper presents the Attentional Combination Network (ACN), which is a highly accurate face align...
Face alignment is a crucial step in multiple face analysis and recognition tasks. The current state-...
Recent advancement in unsupervised and transfer learning methods of deep learning networks has seen ...