Deep, intuitive understanding of facial motions has the potential to provide an intelligent facial expression system as well as a unique encoding of the dynamics of facial actions. The most promising existing approaches rely on extracting hand crafted features; and existing approaches typically work best in constrained conditions and do not generalise well to varying environmental conditions which make them poorly suited to applications such as real-time human robot interactions. In this paper, we propose a multi-label deep learning based facial action detector, which along with a linear SVM classifier outperforms state of the art approaches such as HOG and LBP. We show that our approach can be generalized to other datasets by learning inne...
The Facial Action Coding System, (FACS), devised by Ekman and Friesen (1978), provides an objective ...
Abstract—Recently, deep neural networks have been shown to perform competitively on the task of pred...
International audienceThis paper presents our response to the first interna- tional challenge on Fac...
Unique encoding of the dynamics of facial actions has potential to provide a spontaneous facial expr...
Deep learning based facial expression recognition (FER) has received a lot of attention in the past ...
<p>The face is one of the most powerful channel of nonverbal communication. The most commonly used t...
We present ongoing work on a project for automatic recognition of spontaneous facial actions. Sponta...
© 2010-2012 IEEE. We present a new action recognition deep neural network which adaptively learns th...
Abstract — Spontaneous facial expressions differ from posed expressions in both which muscles are mo...
The face is one of the most powerful channel of non-verbal communication. The most commonly used tax...
Past work on automatic analysis of facial expressions has focused mostly on detecting prototypic exp...
Deep learning became an important image classification and object detection technique more than a de...
Abstract Modelling of facial dynamics, as well as recovering of latent dimensions that correspond t...
Abstract — The tracking and recognition of facial activities from images or videos have attracted gr...
The Facial Action Coding System, (FACS), devised by Ekman and Friesen (1978), provides an objective ...
The Facial Action Coding System, (FACS), devised by Ekman and Friesen (1978), provides an objective ...
Abstract—Recently, deep neural networks have been shown to perform competitively on the task of pred...
International audienceThis paper presents our response to the first interna- tional challenge on Fac...
Unique encoding of the dynamics of facial actions has potential to provide a spontaneous facial expr...
Deep learning based facial expression recognition (FER) has received a lot of attention in the past ...
<p>The face is one of the most powerful channel of nonverbal communication. The most commonly used t...
We present ongoing work on a project for automatic recognition of spontaneous facial actions. Sponta...
© 2010-2012 IEEE. We present a new action recognition deep neural network which adaptively learns th...
Abstract — Spontaneous facial expressions differ from posed expressions in both which muscles are mo...
The face is one of the most powerful channel of non-verbal communication. The most commonly used tax...
Past work on automatic analysis of facial expressions has focused mostly on detecting prototypic exp...
Deep learning became an important image classification and object detection technique more than a de...
Abstract Modelling of facial dynamics, as well as recovering of latent dimensions that correspond t...
Abstract — The tracking and recognition of facial activities from images or videos have attracted gr...
The Facial Action Coding System, (FACS), devised by Ekman and Friesen (1978), provides an objective ...
The Facial Action Coding System, (FACS), devised by Ekman and Friesen (1978), provides an objective ...
Abstract—Recently, deep neural networks have been shown to perform competitively on the task of pred...
International audienceThis paper presents our response to the first interna- tional challenge on Fac...