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Cascade of Ordinal Classification and Local Regression for Audio-Based Affect Estimation

机译:基于音频的影响估计的序序分类和本地回归

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Affective dimensions (i.e. valence, arousal, etc.) are continuous, real variables, bounded on [-1,+1]. They give insights on people emotional state. Literature showed that regressing these variables is a complex problem due to their variability. We propose here a two-step process. First, an ensemble of ordinal classifiers predicts the optimal range within [-1,+1] and a discrete estimate of the variable. Then, a regressor is trained locally on this range and its neighbors and provides a finer continuous estimate. Experiments on audio data from AVEC'2014 and AV+EC'2015 challenges show that this cascading process can be compared favorably with state of art and challengers results.
机译:情感尺寸(即价,唤醒等)是连续的,真实变量,界面上[-1,+ 1]。他们对人们的情感状态洞察。文献表明,由于其变化,回归这些变量是复杂的问题。我们在此提出了两步的过程。首先,序数分类器的集合预测[-1,+ 1]内的最佳范围和变量的离散估计。然后,回归在本系列和邻居上培训,并提供更精细的连续估计。来自AVEC'2014和AV + EC'2015挑战的音频数据的实验表明,这种级联过程可以与艺术状态和挑战者的结果有利。

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