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Decoupling Temporal Dynamics for Naturalistic Affect Recognition in a Two-Stage Regression Framework

机译:两阶段回归框架中用于自然主义情感识别的时间动力学解耦

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Automatic continuous affect recognition from multiple modalities is one of the most active research areas in affective computing. In addressing this regression problem, the advantages of a model, such as Support Vector Regression (SVR), or a model that can capture temporal dependencies within a predefined time window, such as Time Delay Neural Network (TDNN), Long Short-Term Memory (LSTM) or Kalman Filter (KF), have been frequently explored, but in an isolated way. The motivation is towards decoupling temporal information from its features at the semantic level, in order to exploit the slow-changing emotional property at decision level. This paper explores and proposes 2-stage regression framework where SVR, that has been regarded as the baseline approach on affective recognition task, is concatenated together with subsequent models. Extensive experiments have been carried out on a naturalistic emotion dataset, using eight modalities present in RECOLA database. The results shows the proposed framework can capture temporal information at the prediction level, and outperform state-of-theart approaches in continuous affective recognition.
机译:来自多种模式的自动连续情感识别是情感计算中最活跃的研究领域之一。在解决此回归问题时,模型(例如支持向量回归(SVR))或可以捕获预定义时间窗内的时间依存关系的模型(例如时延神经网络(TDNN),长短期记忆)的优点(LSTM)或卡尔曼滤波器(KF),经常被探索,但是是以孤立的方式进行的。动机是为了在语义级别将时间信息与其特征分离,以便在决策级别利用缓慢变化的情感属性。本文探讨并提出了两阶段回归框架,在该框架中,被视为情感识别任务的基本方法的SVR与后续模型一起被串联在一起。使用RECOLA数据库中的八种形式对自然主义情绪数据集进行了广泛的实验。结果表明,所提出的框架可以在预测级别捕获时态信息,并且在连续情感识别方面的表现优于最新技术。

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