Although deep neural networks have achieved reasonable accuracy in solving face alignment, it is still a challenging task, specifically when we deal with facial images, under occlusion, or extreme head poses. Heatmap-based Regression (HBR) and Coordinate-based Regression (CBR) are among the two mainly used methods for face alignment. CBR methods require less computer memory, though their performance is less than HBR methods. In this paper, we propose an Adaptive Coordinate-based Regression (ACR) loss to improve the accuracy of CBR for face alignment. Inspired by the Active Shape Model (ASM), we generate Smooth-Face objects, a set of facial landmark points with less variations compared to the ground truth landmark points. We then introduce a...
This paper investigates how far a very deep neural network is from attaining close to saturating per...
Face alignment is a key component in facial processing. It is a challenging task because human facia...
Face alignment is an important feature for most facial images related algorithms such as expression...
This paper presents the Attentional Combination Network (ACN), which is a highly accurate face align...
This paper proposes a complementary regression network (CRN) that combines global and local regressi...
We propose a face alignment method that uses a deep neural network employing both local feature lear...
Most state-of-the-art solutions for localizing facial feature landmarks build on the recent success ...
International audienceFace alignment is a fundamental problem in computer vision to localize the lan...
© 1992-2012 IEEE. Cascade regression is a popular face alignment approach, and it has achieved good ...
In this paper, we present a deep regression approach for face alignment. The deep architecture consi...
Abstract. We present a very efficient, highly accurate, “Explicit Shape Regression ” approach for fa...
In this paper, we present several improvements on the conventional Active Shape Models (ASM) for fac...
This paper presents a novel Transformer-based facial landmark localization network named Localizatio...
Abstract For smart living applications, personal identification as well as behavior and emotion dete...
The automatic localization of facial landmarks, also referred to as facial landmarking or facialalig...
This paper investigates how far a very deep neural network is from attaining close to saturating per...
Face alignment is a key component in facial processing. It is a challenging task because human facia...
Face alignment is an important feature for most facial images related algorithms such as expression...
This paper presents the Attentional Combination Network (ACN), which is a highly accurate face align...
This paper proposes a complementary regression network (CRN) that combines global and local regressi...
We propose a face alignment method that uses a deep neural network employing both local feature lear...
Most state-of-the-art solutions for localizing facial feature landmarks build on the recent success ...
International audienceFace alignment is a fundamental problem in computer vision to localize the lan...
© 1992-2012 IEEE. Cascade regression is a popular face alignment approach, and it has achieved good ...
In this paper, we present a deep regression approach for face alignment. The deep architecture consi...
Abstract. We present a very efficient, highly accurate, “Explicit Shape Regression ” approach for fa...
In this paper, we present several improvements on the conventional Active Shape Models (ASM) for fac...
This paper presents a novel Transformer-based facial landmark localization network named Localizatio...
Abstract For smart living applications, personal identification as well as behavior and emotion dete...
The automatic localization of facial landmarks, also referred to as facial landmarking or facialalig...
This paper investigates how far a very deep neural network is from attaining close to saturating per...
Face alignment is a key component in facial processing. It is a challenging task because human facia...
Face alignment is an important feature for most facial images related algorithms such as expression...