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Feature Subset Selection Based on Evolutionary Algorithms for Automatic Emotion Recognition in Spoken Spanish and Standard Basque Language

机译:基于进化算法的特征子集选择,用于西班牙语和标准巴斯克语语言中的自动情感识别

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The study of emotions in human-computer interaction is a growing research area. Focusing on automatic emotion recognition, work is being performed in order to achieve good results particularly in speech and facial gesture recognition. In this paper we present a study performed to analyze different Machine Learning techniques validity in automatic speech emotion recognition area. Using a bilingual affective database, different speech parameters have been calculated for each audio recording. Then, several Machine Learning techniques have been applied to evaluate their usefulness in speech emotion recognition. In this particular case, techniques based on evolutive algorithms (EDA) have been used to select speech feature subsets that optimize automatic emotion recognition success rate. Achieved experimental results show a representative increase in the abovementioned success rate.
机译:人计算机互动中情绪的研究是一种不断增长的研究区。专注于自动情感认可,正在进行工作,以便在言语和面部姿态识别方面实现良好的效果。在本文中,我们提出了一项研究,以分析自动语音情感识别区域中的不同机器学习技术有效性。使用双语情感数据库,已经为每个音频记录计算了不同的语音参数。然后,已经应用了几种机器学习技术来评估它们在语音情感识别中的用处。在这种特殊情况下,基于演化算法(EDA)的技术已经用于选择优化自动情绪识别成功率的语音特征子集。实现的实验结果表明,上述成功率的代表性增加。

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