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Gender Voice Recognition Using Random Forest Recursive Feature Elimination with Gradient Boosting Machines

机译:使用梯度提升机的随机森林递归特征消除技术进行性别语音识别

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Speech emotion recognition is a difficult task in the field of affective computing because emotions in speech heavily depend on a variety of factors such as feeling, thought, behaviour, mood, temperament, personality and disposition that are hard to model. Emotion plays a significant role in decision making and it influences human perception, learning, behaviour and relationships between individuals. Gender voice is a contributing factor in boosting the accuracy of emotion recognition systems using speech signals. In this paper, we propose a gender voice recognition method which makes use of feature selection through the Random Forest Recursive Feature Elimination (RF-RFE) algorithm with Gradient Boosting Machines (GBMs) algorithm for gender classification. The training and testing data were obtained from a public gender voice dataset. The GBMs algorithm was later evaluated against the feed forward neural network and extreme machine learning algorithms. The classification accuracy of the GBMs improved after applying the RF-RFE to the dataset. Experimental results indicate that GBMs outperformed all the comparative algorithms in classification accuracy and proved to be a suitable candidate for gender voice recognition.
机译:语音情感识别在情感计算领域是一项艰巨的任务,因为语音情感很大程度上取决于难以建模的各种因素,例如感觉,思想,行为,情绪,气质,性格和性格。情感在决策中起着重要作用,它影响着人类的感知,学习,行为和个人之间的关系。性别语音是提高使用语音信号的情感识别系统准确性的一个重要因素。在本文中,我们提出了一种性别语音识别方法,该方法利用通过随机森林递归特征消除(RF-RFE)算法和梯度提升机(GBMs)算法进行特征分类的特征选择。培训和测试数据来自公共性别语音数据集。后来针对前馈神经网络和极限机器学习算法对GBMs算法进行了评估。将RF-RFE应用于数据集后,GBM的分类准确性得到了提高。实验结果表明,GBMs在分类准确度方面优于所有比较算法,并被证明是性别语音识别的合适候选者。

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