132,726 research outputs found

    Classification et Caractérisation de l'Expression Corporelle des Emotions dans des Actions Quotidiennes

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    The work conducted in this thesis can be summarized into four main steps.Firstly, we proposed a multi-level body movement notation system that allows the description ofexpressive body movement across various body actions. Secondly, we collected a new databaseof emotional body expression in daily actions. This database constitutes a large repository of bodilyexpression of emotions including the expression of 8 emotions in 7 actions, combining video andmotion capture recordings and resulting in more than 8000 sequences of expressive behaviors.Thirdly, we explored the classification of emotions based on our multi-level body movement notationsystem. Random Forest approach is used for this purpose. The advantage of using RandomForest approach in our work is double-fold : 1) reliability of the classification model and 2) possibilityto select a subset of relevant features based on their relevance measures. We also comparedthe automatic classification of emotions with human perception of emotions expressed in differentactions. Finally, we extracted the most relevant features that capture the expressive content of themotion based on the relevance measure of features returned by the Random Forest model. Weused this subset of features to explore the characterization of emotional body expression acrossdifferent actions. A Decision Tree model was used for this purpose.Ce travail de thèse peut être résumé en quatre étapes principales. Premièrement, nousavons proposé un système d’annotation multi-niveaux pour décrire le mouvement corporel expressif dansdifférentes actions. Deuxièmement, nous avons enregistré une base de données de l’expression corporelledes émotions dans des actions quotidiennes. Cette base de données constitue un large corpus de comportementsexpressifs considérant l’expression de 8 émotions dans 7 actions quotidiennes, combinant à la fois lesdonnées audio-visuelle et les données de capture de mouvement et donnant lieu à plus que 8000 séquencesde mouvement expressifs. Troisièmement, nous avons exploré la classification des émotions en se basantsur notre système d’annotation multi-niveaux. L’approche des forêts aléatoires est utilisée pour cette fin. L’utilisationdes forêts aléatoires dans notre travail a un double objectif : 1) la fiabilité du modèle de classification,et 2) la possibilité de sélectionner un sous-ensemble de paramètres pertinents en se basant sur la mesured’importance retournée par le modèle. Nous avons aussi comparé la classification automatique des émotionsavec la perception humaine des émotions exprimées dans différentes actions. Finalement, nous avonsextrait les paramètres les plus pertinents qui retiennent l’expressivité du mouvement en se basant sur la mesured’importance retournée par le modèle des forêts aléatoires. Nous avons utilisé ce sous-ensemble deparamètres pour explorer la caractérisation de l’expression corporelle des émotions dans différentes actionsquotidiennes. Un modèle d’arbre de décision a été utilisé pour cette fin

    Time-delay neural network for continuous emotional dimension prediction from facial expression sequences

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    "(c) 2015 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for all other users, including reprinting/ republishing this material for advertising or promotional purposes, creating new collective works for resale or redistribution to servers or lists, or reuse of any copyrighted components of this work in other works."Automatic continuous affective state prediction from naturalistic facial expression is a very challenging research topic but very important in human-computer interaction. One of the main challenges is modeling the dynamics that characterize naturalistic expressions. In this paper, a novel two-stage automatic system is proposed to continuously predict affective dimension values from facial expression videos. In the first stage, traditional regression methods are used to classify each individual video frame, while in the second stage, a Time-Delay Neural Network (TDNN) is proposed to model the temporal relationships between consecutive predictions. The two-stage approach separates the emotional state dynamics modeling from an individual emotional state prediction step based on input features. In doing so, the temporal information used by the TDNN is not biased by the high variability between features of consecutive frames and allows the network to more easily exploit the slow changing dynamics between emotional states. The system was fully tested and evaluated on three different facial expression video datasets. Our experimental results demonstrate that the use of a two-stage approach combined with the TDNN to take into account previously classified frames significantly improves the overall performance of continuous emotional state estimation in naturalistic facial expressions. The proposed approach has won the affect recognition sub-challenge of the third international Audio/Visual Emotion Recognition Challenge (AVEC2013)1

    Automatic emotional state detection using facial expression dynamic in videos

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    In this paper, an automatic emotion detection system is built for a computer or machine to detect the emotional state from facial expressions in human computer communication. Firstly, dynamic motion features are extracted from facial expression videos and then advanced machine learning methods for classification and regression are used to predict the emotional states. The system is evaluated on two publicly available datasets, i.e. GEMEP_FERA and AVEC2013, and satisfied performances are achieved in comparison with the baseline results provided. With this emotional state detection capability, a machine can read the facial expression of its user automatically. This technique can be integrated into applications such as smart robots, interactive games and smart surveillance systems
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