Modern facial motion capture systems employ a two-pronged approach for capturing and rendering facial motion. Visual data (2D) is used for tracking the facial features and predicting facial expression, whereas Depth (3D) data is used to build a series of expressions on 3D face models. An issue with modern research approaches is the use of a single data stream that provides little indication of the 3D facial structure. We compare and analyse the performance of Convolutional Neural Networks (CNN) using visual, Depth and merged data to identify facial features in real-time using a Depth sensor. First, we review the facial landmarking algorithms and its datasets for Depth data. We address the limitation of the current datasets by introducing th...
abstract: This paper presents work that was done to create a system capable of facial expression rec...
Face recognition remains a challenge today as recognition performance is strongly affected by variab...
Automated facial expression recognition has gained much attention in the last years due to growing a...
The goal of this thesis it to use deep neural networks, specifically Convolutional Neural Networks (...
International audienceFacial landmark detection has been an active research subject over the last de...
We describe a deep learning based method for estimating 3D facial expression coefficients. Unlike pr...
Facial expression recognition is an active area of research with applications in the design of Human...
Facial expressions are a series of fast, complex and interconnected movement that causes an array of...
In this paper, we explore how synthetically generated 3D face models can be used to construct a high...
As Consumer Technologies (CT) seeks to engage and interact more closely with the end-user it becomes...
Effective data augmentation is crucial for facial landmark localisation with Convolutional Neural Ne...
We present a novel method for modeling 3D face shape, viewpoint, and expression from a single, uncon...
In this paper an alternative approach to landmark detection using cascaded convolutional neural netw...
Abstract—Recently, deep neural networks have been shown to perform competitively on the task of pred...
For accurate and fast detection of facial landmarks, we propose a new facial landmark detection meth...
abstract: This paper presents work that was done to create a system capable of facial expression rec...
Face recognition remains a challenge today as recognition performance is strongly affected by variab...
Automated facial expression recognition has gained much attention in the last years due to growing a...
The goal of this thesis it to use deep neural networks, specifically Convolutional Neural Networks (...
International audienceFacial landmark detection has been an active research subject over the last de...
We describe a deep learning based method for estimating 3D facial expression coefficients. Unlike pr...
Facial expression recognition is an active area of research with applications in the design of Human...
Facial expressions are a series of fast, complex and interconnected movement that causes an array of...
In this paper, we explore how synthetically generated 3D face models can be used to construct a high...
As Consumer Technologies (CT) seeks to engage and interact more closely with the end-user it becomes...
Effective data augmentation is crucial for facial landmark localisation with Convolutional Neural Ne...
We present a novel method for modeling 3D face shape, viewpoint, and expression from a single, uncon...
In this paper an alternative approach to landmark detection using cascaded convolutional neural netw...
Abstract—Recently, deep neural networks have been shown to perform competitively on the task of pred...
For accurate and fast detection of facial landmarks, we propose a new facial landmark detection meth...
abstract: This paper presents work that was done to create a system capable of facial expression rec...
Face recognition remains a challenge today as recognition performance is strongly affected by variab...
Automated facial expression recognition has gained much attention in the last years due to growing a...