A Survey of Affect Recognition Methods: Audio, Visual, and Spontaneous Expressions
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TL;DR: In this paper, the authors discuss human emotion perception from a psychological perspective, examine available approaches to solving the problem of machine understanding of human affective behavior, and discuss important issues like the collection and availability of training and test data.
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Abstract: Automated analysis of human affective behavior has attracted increasing attention from researchers in psychology, computer science, linguistics, neuroscience, and related disciplines. However, the existing methods typically handle only deliberately displayed and exaggerated expressions of prototypical emotions despite the fact that deliberate behaviour differs in visual appearance, audio profile, and timing from spontaneously occurring behaviour. To address this problem, efforts to develop algorithms that can process naturally occurring human affective behaviour have recently emerged. Moreover, an increasing number of efforts are reported toward multimodal fusion for human affect analysis including audiovisual fusion, linguistic and paralinguistic fusion, and multi-cue visual fusion based on facial expressions, head movements, and body gestures. This paper introduces and surveys these recent advances. We first discuss human emotion perception from a psychological perspective. Next we examine available approaches to solving the problem of machine understanding of human affective behavior, and discuss important issues like the collection and availability of training and test data. We finally outline some of the scientific and engineering challenges to advancing human affect sensing technology.
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Citations
•Journal Article
Designing for Automatic Affect Inference in Learning Environments
Shazia Afzal,Peter Robinson +1 more
TL;DR: A dynamic emotion inference system that uses state of the art facial feature point tracking technology to encode the spatial and temporal signature of these affect states and a bottom-up analysis approach based on context-relevant data is adopted.
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High-Level Geometry-based Features of Video Modality for Emotion Prediction
Raphaël Weber,Vincent Barrielle,Catherine Soladie,Renaud Seguier +3 more
- 16 Oct 2016
TL;DR: This paper proposes to improve the performance of the multimodal prediction with low-level features by adding high-level geometry-based features, namely head pose and expression signature, and fuse the unimodal predictions trained on each training subject before performing the multi-modal fusion.
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Emerging Technologies and Applications on Interactive Entertainments
TL;DR: This Introduction summarizes latest interactive entertainment technologies and applications, and briefly highlights some potential research directions, and introduces the seven papers that are accepted to the special issue.
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Affective issues in Semantic Educational Recommender Systems.
Olga C. Santos,Jesus G. Boticario +1 more
- 01 Jan 2012
TL;DR: The benefits of considering affective issues in educational recommender systems are discussed and the extension of the Semantic Educational Recommender Systems (SERS) approach, which is characterized by its interoperability with e-learning services, to deal with learners’ affective traits in educational scenarios is described.
Opportunistic and Context-Aware Affect Sensing on Smartphones
TL;DR: The authors identify recent advances, key solutions for implementing opportunistic sensing on smart phones, and explore robustness issues and the challenges of mental health patients as participants.
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References
Development and validation of brief measures of positive and negative affect: The PANAS scales.
TL;DR: Two 10-item mood scales that comprise the Positive and Negative Affect Schedule (PANAS) are developed and are shown to be highly internally consistent, largely uncorrelated, and stable at appropriate levels over a 2-month time period.
•Book
Affective Computing
Rosalind W. Picard
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TL;DR: Key issues in affective computing, " computing that relates to, arises from, or influences emotions", are presented and new applications are presented for computer-assisted learning, perceptual information retrieval, arts and entertainment, and human health and interaction.
5.7K
Combining Pattern Classifiers
Ludmila I. Kuncheva
- 02 Jul 2004
TL;DR: This combining pattern classifiers methods and algorithms helps people to enjoy a good book with a cup of coffee in the afternoon, instead they cope with some harmful virus inside their computer.
3K
Comprehensive database for facial expression analysis
Takeo Kanade,Jeffrey F. Cohn,Yingli Tian +2 more
- 26 Mar 2000
TL;DR: The problem space for facial expression analysis is described, which includes level of description, transitions among expressions, eliciting conditions, reliability and validity of training and test data, individual differences in subjects, head orientation and scene complexity image characteristics, and relation to non-verbal behavior.