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Evaluation of Influence of Arousal-Valence Primitives on Speech Emotion Recognition

机译:配价基元对语音情感识别的影响评估

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摘要

Speech Emotion recognition is a challenging research problem with a significant scientific interest. There has been a lot of research and development around this field in the recent times. In this article, we present a study which aims to improve the recognition accuracy of speech emotion recognition using a hierarchical method based on Gaussian Mixture Model and Support Vector Machines for dimensional and continuous prediction of emotions in valence (positive vs negative emotion) and arousal space (the degree of emotional intensity). According to these dimensions, emotions are categorized into N broad groups. These N groups are further classified into other groups using spectral representation. We verify and compare the functionality of the different proposed multi-level models in order to study differential effects of emotional valence and arousal on the recognition of a basic emotion. Experimental studies are performed over the Berlin Emotional database and the Surrey Audio-Visual Expressed Emotion corpus, expressing different emotions, in German and English languages.
机译:语音情感识别是一个具有重大科学意义的具有挑战性的研究问题。近年来,围绕该领域进行了大量的研究和开发。在本文中,我们提出了一项研究,该研究旨在使用基于高斯混合模型和支持向量机的分层方法来提高语音情感识别的识别准确性,以对价(正负情感)和唤醒空间中的情感进行维度和连续预测(情绪强度的程度)。根据这些维度,情绪可分为N大类。使用频谱表示将这N个组进一步分类为其他组。我们验证和比较不同提议的多层次模型的功能,以研究情绪化合价和唤醒对基本情绪识别的不同影响。在柏林情感数据库和萨里视听表达情感语料库上进行了实验研究,用德语和英语表达了不同的情感。

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