价(化学)
唤醒
心情
心理学
优势(遗传学)
面部表情
认知心理学
情绪识别
计算机科学
临床心理学
人工智能
社会心理学
沟通
生物化学
量子力学
基因
物理
化学
作者
Michel Valstar,Björn W. Schuller,Kirsty Smith,Timur Almaev,Florian Eyben,Jarek Krajewski,Roddy Cowie,Maja Pantić
标识
DOI:10.1145/2661806.2661807
摘要
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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