Comparing Feature Sets for Acted and Spontaneous Speech in View of Automatic Emotion Recognition

Thurid Vogt, E. André
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引用次数: 257

Abstract

We present a data-mining experiment on feature selection for automatic emotion recognition. Starting from more than 1000 features derived from pitch, energy and MFCC time series, the most relevant features in respect to the data are selected from this set by removing correlated features. The features selected for acted and realistic emotions are analyzed and show significant differences. All features are computed automatically and we also contrast automatically with manually units of analysis. A higher degree of automation did not prove to be a disadvantage in terms of recognition accuracy
基于自动情绪识别的动作语音和自发语音特征集比较
提出了一种用于自动情感识别的特征选择数据挖掘实验。从从基音、能量和MFCC时间序列中得到的1000多个特征开始,通过去除相关特征,从中选择与数据最相关的特征。分析了表演情感和现实情感所选择的特征,发现两者存在显著差异。所有的特征都是自动计算的,我们还自动与手动分析单元进行对比。事实证明,就识别准确性而言,更高程度的自动化并不是一个劣势
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