Exploring sources of variation in human behavioral data: Towards automatic audio-visual emotion recognition

Yelin Kim
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引用次数: 2

Abstract

My PhD work aims at developing computational methodologies for automatic emotion recognition from audiovisual behavioral data. A main challenge in automatic emotion recognition is that human behavioral data are highly complex, due to multiple sources that vary and modulate behaviors. My goal is to provide computational frameworks for understanding and controlling for multiple sources of variation in human behavioral data that co-occur with the production of emotion, with the aim of improving automatic emotion recognition systems [1]-[6]. In particular, my research aims at providing representation, modeling, and analysis methods for complex and time-changing behaviors in human audio-visual data by introducing temporal segmentation and time-series analysis techniques. This research contributes to the affective computing community by improving the performance of automatic emotion recognition systems and increasing the understanding of affective cues embedded within complex audio-visual data.
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我的博士工作旨在开发从视听行为数据中自动识别情感的计算方法。自动情绪识别的一个主要挑战是人类行为数据非常复杂,因为有多种来源可以改变和调节行为。我的目标是提供计算框架,用于理解和控制与情感产生共同发生的人类行为数据中的多种变异来源,目的是改进自动情感识别系统[1]-[6]。特别是,我的研究旨在通过引入时间分割和时间序列分析技术,为人类视听数据中复杂和随时间变化的行为提供表征、建模和分析方法。本研究通过提高自动情感识别系统的性能和增加对复杂视听数据中嵌入的情感线索的理解,为情感计算社区做出了贡献。
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