Emotion Recognition from Speech using SVM and Random Forest Classifier

A. S. Wincy Pon Annal, R. Manonmani, C. Booma
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Abstract

Speech is the most natural way of people to communicate with one another. It is a vital medium for communicating a person's thoughts, feelings, and mental condition to others. The process of identifying the intellectual state is the recognition of basic emotion through speech. In human life, emotions are incredibly significant. In this project, the emotion is recognized from speech using Support Vector Machine (SVM) and Random Forest classifiers. These are supervised machine learning algorithms used for both classification and regression problems. SVM classifies data by creating N-dimensional hyper planes that divide the input into different categories. The classification is accomplished using a linear and non-linear separation surface in the dataset's input feature. Random Forest is a classifier that combines a number of decision trees on different subsets of a dataset and averages the results to increase the dataset's predicted accuracy. These classifiers are used to categorize emotions like happiness, rage, sadness and neutral for a certain incoming voice signal. Here, the system is trained and developed to recognize emotion in real-time speech. The result demonstrates that the Random Forest classifier is significantly better, when compared to the SVM classifier.
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基于SVM和随机森林分类器的语音情感识别
语言是人们相互交流的最自然的方式。它是一个人与他人交流思想、感情和精神状况的重要媒介。识别智力状态的过程是通过言语对基本情感的识别。在人类生活中,情感是非常重要的。在这个项目中,使用支持向量机(SVM)和随机森林分类器从语音中识别情感。这些是用于分类和回归问题的监督机器学习算法。支持向量机通过创建n维超平面将输入分为不同的类别来对数据进行分类。分类是使用数据集输入特征中的线性和非线性分离曲面来完成的。随机森林是一种分类器,它结合了数据集不同子集上的许多决策树,并对结果进行平均,以提高数据集的预测精度。这些分类器用于根据特定的语音信号对快乐、愤怒、悲伤和中性等情绪进行分类。在这里,系统被训练和开发来识别实时语音中的情绪。结果表明,与SVM分类器相比,随机森林分类器明显更好。
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