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Arabic Speech Emotion Recognition Method Based On LPC And PPSD

机译:基于LPC和PPSD的阿拉伯语语音情感识别方法

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This research detects and recognize the emotions in Arabic speech audio files that contains records of human voices with different emotion classes (sad, happy, surprised, and questioning). In the area of emotion detection, when a person becomes emotional, his voice is adjusted based on the state of emotion. As the acoustic features like pressure, strength and loudness varies from a state of emotion to another. However, in the detection of feelings, the classification and modeling part of the features gets priority with the extracted features. Therefore, extracting the best features that describes the emotions stats is the most challenging task. This paper proposes an efficient approach to recognize the Arabic speech emotions. The presented method contains three main phases, signal preprocessing phase for noise removal and signal bandwidth reduction, feature extraction phase using a combination of Linear Predictive Codes (LPC) and the 10-degree polynomial Curve fitting Coefficients over the periodogram power spectral density function of the speech signal and machine learning phase using various machine learning algorithms (ANN, KNN, SVM, Decision Tree, Logistic Regression) and compare between their accuracy results to get the best accuracy.
机译:这项研究发现并识别阿拉伯语语音音频文件中的情绪,其中包含具有不同情感课程的人类声音的记录(悲伤,快乐,惊讶和质疑)。在情绪检测领域,当一个人变得情绪时,他的声音是根据情绪的状态调整的。随着像压力的声学特征,力量和响度不同于情绪的状态而异。然而,在检测到感受中,特征的分类和建模部分具有提取的特征优先。因此,提取描述情绪统计的最佳功能是最具挑战性的任务。本文提出了一种识别阿拉伯语语音情绪的有效方法。呈现的方法包含三个主要相,信号预处理阶段用于噪声去除和信号带宽减少,特征提取阶段使用线性预测代码(LPC)和10度多项式曲线拟合系数通过周期度点功率谱密度函数语音信号和机器学习阶段使用各种机器学习算法(ANN,KNN,SVM,决策树,逻辑回归),并比较他们的准确性结果,以获得最佳准确性。

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