Meta-Analysis of the First Facial Expression Recognition Challenge.

M F Valstar, M Mehu, Bihan Jiang, M Pantic, K Scherer
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引用次数: 292

Abstract

Automatic facial expression recognition has been an active topic in computer science for over two decades, in particular facial action coding system action unit (AU) detection and classification of a number of discrete emotion states from facial expressive imagery. Standardization and comparability have received some attention; for instance, there exist a number of commonly used facial expression databases. However, lack of a commonly accepted evaluation protocol and, typically, lack of sufficient details needed to reproduce the reported individual results make it difficult to compare systems. This, in turn, hinders the progress of the field. A periodical challenge in facial expression recognition would allow such a comparison on a level playing field. It would provide an insight on how far the field has come and would allow researchers to identify new goals, challenges, and targets. This paper presents a meta-analysis of the first such challenge in automatic recognition of facial expressions, held during the IEEE conference on Face and Gesture Recognition 2011. It details the challenge data, evaluation protocol, and the results attained in two subchallenges: AU detection and classification of facial expression imagery in terms of a number of discrete emotion categories. We also summarize the lessons learned and reflect on the future of the field of facial expression recognition in general and on possible future challenges in particular.

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第一次面部表情识别挑战的元分析。
二十多年来,自动面部表情识别一直是计算机科学中的一个活跃话题,特别是面部动作编码系统(AU)对面部表情图像中离散情绪状态的检测和分类。标准化和可比性受到了一些关注;例如,有许多常用的面部表情数据库。然而,由于缺乏普遍接受的评估方案,并且通常缺乏重现所报告的个别结果所需的足够细节,因此很难对系统进行比较。这反过来又阻碍了该领域的发展。面部表情识别的周期性挑战将允许在公平的竞争环境中进行这种比较。它将提供对该领域发展的深入了解,并使研究人员能够确定新的目标、挑战和目标。本文介绍了在2011年IEEE面部和手势识别会议期间举行的面部表情自动识别中的第一个此类挑战的元分析。它详细介绍了挑战数据,评估方案,以及在两个子挑战中获得的结果:AU检测和面部表情图像在许多离散情感类别方面的分类。我们还总结了经验教训,并对面部表情识别领域的未来进行了反思,特别是对未来可能面临的挑战。
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