AVEC 2014: 3D维度影响和抑郁症识别挑战

AVEC '14 Pub Date : 2014-11-07 DOI:10.1145/2661806.2661807
M. Valstar, Björn Schuller, Kirsty Smith, Timur R. Almaev, F. Eyben, J. Krajewski, R. Cowie, M. Pantic
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引用次数: 354

摘要

情绪障碍本质上与情绪有关。特别是,患有情绪障碍(如单极抑郁症)的人的行为与情感维度效价、觉醒和支配有很强的时间相关性。除了结构化的自我报告问卷外,心理学家和精神病学家还通过观察患者的面部表情和声音线索来评估患者的抑郁程度。正是在这种背景下,我们提出了第四届视听情感识别挑战赛(AVEC 2014)。这个版本的挑战使用了以前挑战中使用的任务的子集,允许更集中的研究。此外,还添加了第三维度(Dominance)的标签,每个剪辑的注释者数量增加到至少3个,大多数剪辑的注释者为5个。这个挑战有两个目标,逻辑上组织为子挑战:第一个是预测情感维度在每个时刻的连续值,价,唤醒和支配。第二步是预测数据集中每个记录的单个自我报告的抑郁严重程度指标的值。本文介绍了挑战指南、使用的常用数据以及基线系统在这两个任务上的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AVEC 2014: 3D Dimensional Affect and Depression Recognition Challenge
Mood disorders are inherently related to emotion. In particular, the behaviour of people suffering from mood disorders such as unipolar depression shows a strong temporal correlation with the affective dimensions valence, arousal and dominance. In addition to structured self-report questionnaires, psychologists and psychiatrists use in their evaluation of a patient's level of depression the observation of facial expressions and vocal cues. It is in this context that we present the fourth Audio-Visual Emotion recognition Challenge (AVEC 2014). This edition of the challenge uses a subset of the tasks used in a previous challenge, allowing for more focussed studies. In addition, labels for a third dimension (Dominance) have been added and the number of annotators per clip has been increased to a minimum of three, with most clips annotated by 5. The challenge has two goals logically organised as sub-challenges: the first is to predict the continuous values of the affective dimensions valence, arousal and dominance at each moment in time. The second is to predict the value of a single self-reported severity of depression indicator for each recording in the dataset. This paper presents the challenge guidelines, the common data used, and the performance of the baseline system on the two tasks.
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