Using Speech Signal for Emotion Recognition Using Hybrid Features with SVM Classifier

Fatima A.Hammed, Loay E. George
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Abstract

Emotion recognition is a hot topic that has received a lot of attention and study,owing to its significance in a variety of fields, including applications needing human-computer interaction (HCI). Extracting features related to the emotional state of speech remains one of the important research challenges.This study investigated the approach of the core idea behind feature extraction is the residual signal of the prediction procedure is the difference between the original and the prediction .hence the visibility of using sets of extracting features from speech single when the statistical of local features were used to achieve high detection accuracy for seven emotions. The proposed approach is based on the fact that local features can provide efficient representations suitable for pattern recognition. Publicly available speech datasets like the Berlin dataset are tested using a support vector machine (SVM) classifier. The hybrid features were trained separately. The results indicated that some features were terrible. Some were very encouraging, reaching 99.4%. In this article, the SVM classifier test results with the same tested hybrid features that published in a previous article  will be presented, also a comparison between  some related works  and the proposed technique  in speech emotion recognition techniques.
基于混合特征与SVM分类器的语音信号情感识别
由于情感识别在包括人机交互(HCI)应用在内的许多领域具有重要意义,因此它是一个受到广泛关注和研究的热门话题。提取与言语情绪状态相关的特征仍然是重要的研究挑战之一。本研究探讨了特征提取方法背后的核心思想是预测过程的残差信号是原始和预测之间的差异,因此在使用局部特征统计的情况下,使用语音单个提取特征集的可见性,以达到对七种情绪的高检测精度。提出的方法是基于局部特征可以提供适合模式识别的有效表示。公开可用的语音数据集,如柏林数据集,使用支持向量机(SVM)分类器进行测试。混合特征分别进行训练。结果表明,一些特征是可怕的。有些非常令人鼓舞,达到99.4%。在这篇文章中,我们将给出与上一篇文章中发表的混合特征测试相同的SVM分类器测试结果,并将一些相关工作与本文提出的语音情感识别技术进行比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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