A Performance Evaluation of Machine Learning Algorithms for Emotion Recognition through Speech

Biswajeet Sahu, H. Palo, S. Mohanty
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引用次数: 1

Abstract

This paper aims to recognize the human expressive states from their voice samples. It intends to extract a few reliable features and combine them intelligently for the said task for effective recognition. Initially, it extracts a few sub-band spectral properties from voice samples containing emotional information. Further, the pitch and its standard deviation along with the log-energy features have been extracted to develop an efficient combinational model. The chosen features are complementary, hence expected to increase the available emotional information. To validate the combinational framework, several Machine Learning Algorithms (MLAs) have been simulated and compared. Among the classifiers, the Random Forest (RF) has outperformed all others in terms of classification accuracy whereas the Decision Tree remains computationally least expensive.
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基于语音的情感识别机器学习算法的性能评估
本文旨在从人的语音样本中识别人的表达状态。该方法旨在为上述任务提取一些可靠的特征,并将它们智能地组合起来,以达到有效识别的目的。首先,它从包含情感信息的语音样本中提取出几个子波段的频谱特性。进一步,提取了基音及其标准差以及对数能量特征,建立了有效的组合模型。所选择的特征是互补的,因此期望增加可用的情感信息。为了验证组合框架,对几种机器学习算法进行了仿真和比较。在分类器中,随机森林(RF)在分类精度方面优于所有其他分类器,而决策树仍然是计算成本最低的。
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