野性:价态和唤醒“野性”挑战

S. Zafeiriou, D. Kollias, M. Nicolaou, A. Papaioannou, Guoying Zhao, I. Kotsia
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引用次数: 275

摘要

“野外情感挑战”提出了一个新的综合基准,用于评估面部情感/行为分析/理解“野外”的表现。off -wild基准包含大约300个视频(超过2000分钟的数据),这些视频都是“in-the-wild”捕获的(主要来源是Youtube视频)。本文介绍了数据库描述、实验设置、挑战中使用的基线方法,最后总结了在价性和唤醒估计中提交的不同方法的性能。该挑战表明,精心设计的深度神经网络在使用野外数据进行训练时可以获得非常好的性能。
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Aff-Wild: Valence and Arousal ‘In-the-Wild’ Challenge
The Affect-in-the-Wild (Aff-Wild) Challenge proposes a new comprehensive benchmark for assessing the performance of facial affect/behaviour analysis/understanding 'in-the-wild'. The Aff-wild benchmark contains about 300 videos (over 2,000 minutes of data) annotated with regards to valence and arousal, all captured 'in-the-wild' (the main source being Youtube videos). The paper presents the database description, the experimental set up, the baseline method used for the Challenge and finally the summary of the performance of the different methods submitted to the Affect-in-the-Wild Challenge for Valence and Arousal estimation. The challenge demonstrates that meticulously designed deep neural networks can achieve very good performance when trained with in-the-wild data.
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