International audienceThis paper presents our response to the first interna- tional challenge on Facial Emotion Recognition and Analysis. We propose to combine different types of features to automatically detect Action Units in facial images. We use one multi-kernel SVM for each Action Unit we want to detect. The first kernel matrix is computed using Local Gabor Binary Pattern histograms and a histogram intersection kernel. The second kernel matrix is computed from AAM coefficients and an RBF kernel. During the training step, we combine these two types of features using the recently proposed SimpleMKL algorithm. SVM outputs are then averaged to exploit temporal information in the sequence. To eval- uate our system, we perform deep experimen...
We present a systematic comparison of machine learning methods applied to the problem of fully autom...
Deep, intuitive understanding of facial motions has the potential to provide an intelligent facial e...
In this paper, we investigate to what extent modern computer vision and machine learning techniques ...
International audienceThis paper presents our response to the first interna- tional challenge on Fac...
Print ISBN: 978-1-4244-9140-7International audienceThis study presents a combination of geometric an...
International audience— Automatic facial expression recognition has emerged over two decades. The re...
Automated analysis of facial expressions has remained an interesting and challenging research topic ...
Abstract — The problem of learning several related tasks has recently been addressed with success by...
Abstract: Recently facial expression recognition has turned out to be an interesting field in resear...
Collecting and labeling various and relevant data for training automatic facial information predicti...
Statistical pattern recognition occupies a central place in the general context of machine learning ...
Estimation of facial expressions, as spatio-temporal processes, can take advantage of kernel methods...
In this paper we propose a novel computer vision method for classifying human facial expression from...
The study of facial movement and expression has been a prominent area of research since the early wo...
In this paper an analysis is conducted regarding whether a higher classification accuracy of facial ...
We present a systematic comparison of machine learning methods applied to the problem of fully autom...
Deep, intuitive understanding of facial motions has the potential to provide an intelligent facial e...
In this paper, we investigate to what extent modern computer vision and machine learning techniques ...
International audienceThis paper presents our response to the first interna- tional challenge on Fac...
Print ISBN: 978-1-4244-9140-7International audienceThis study presents a combination of geometric an...
International audience— Automatic facial expression recognition has emerged over two decades. The re...
Automated analysis of facial expressions has remained an interesting and challenging research topic ...
Abstract — The problem of learning several related tasks has recently been addressed with success by...
Abstract: Recently facial expression recognition has turned out to be an interesting field in resear...
Collecting and labeling various and relevant data for training automatic facial information predicti...
Statistical pattern recognition occupies a central place in the general context of machine learning ...
Estimation of facial expressions, as spatio-temporal processes, can take advantage of kernel methods...
In this paper we propose a novel computer vision method for classifying human facial expression from...
The study of facial movement and expression has been a prominent area of research since the early wo...
In this paper an analysis is conducted regarding whether a higher classification accuracy of facial ...
We present a systematic comparison of machine learning methods applied to the problem of fully autom...
Deep, intuitive understanding of facial motions has the potential to provide an intelligent facial e...
In this paper, we investigate to what extent modern computer vision and machine learning techniques ...