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Regularized Multi-Concept MIL for weakly-supervised facial behavior categorization
Author(s) -
Adrià Ruiz,
Xavier Binefa,
Joost van de Weijer
Publication year - 2014
Language(s) - English
Resource type - Conference proceedings
DOI - 10.5244/c.28.13
Subject(s) - discriminative model , computer science , categorization , artificial intelligence , regularization (linguistics) , face (sociological concept) , set (abstract data type) , facial expression , machine learning , frame (networking) , pattern recognition (psychology) , telecommunications , social science , sociology , programming language
In this work, we address the problem of estimating high-level semantic labels for videos of recorded people by means of analysing their facial expressions. This problem, to which we refer as facial behavior categorization, is a weakly-supervised learning problem where we do not have access to frame-by-frame facial gesture annotations but only weak-labels at the video level are available. Therefore, the goal is to learn a set of discriminative expressions appearing during the training videos and how they determine these labels. Facial behavior categorization can be posed as a Multi-Instance-Learning (MIL) problem and we propose a novel MIL method called Regularized Multi-Concept MIL to solve it. In contrast to previous approaches applied in facial behavior analysis, RMC-MIL follows a Multi-Concept assumption which allows different facial expressions (concepts) to contribute differently to the video-label. Moreover, to handle with the high-dimensional nature of facial-descriptors, RMC-MIL uses a discriminative approach to model the concepts and structured sparsity regularization to discard non-informative features. RMC-MIL is posed as a convex-constrained optimization problem where all the parameters are jointly learned using the Projected-Quasi-Newton method. In our experiments, we use two public data-sets to show the advantages of the Regularized MultiConcept approach and its improvement compared to existing MIL methods. RMC-MIL outperforms state-of-the-art results in the UNBC data-set for pain detection.

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