基于堆叠泛化集成神经网络的机器人宠物语音情感识别研究

Yongming Huang, Guobao Zhang, Xiaoli Xu
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引用次数: 6

摘要

本文针对语音信号中人类特殊情感状态,提出了一种基于堆叠泛化集成神经网络的情感识别系统。收集3位说话者450句不同内容的情感短句作为实验材料。从语音信号中提取与能量、语速、音高和共振峰相关的特征。使用堆叠泛化集成神经网络作为5种情绪的分类器,包括愤怒、平静、快乐、悲伤和无聊。首先,与传统的BP网络或小波神经网络相比,实验结果表明,堆叠泛化集成神经网络具有更快的收敛速度和更高的识别率。其次,在讨论了不同集成神经网络的优缺点后,对机器人宠物进行了合适的决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Speech Emotion Recognition Research Based on the Stacked Generalization Ensemble Neural Network for Robot Pet
In this paper, we present an emotion recognition system using the stacked generalization ensemble neural network for special human affective state in the speech signal. 450 short emotional sentences with different contents from 3 speakers were collected as experiment materials. The features relevant with energy, speech rate, pitch and formant are extracted from speech signals. Stacked Generalization Ensemble Neural Networks are used as the classifier for 5 emotions including anger, calmness, happiness, sadness and boredom. First, compared with the traditional BP network or wavelet neural network, the results of experiments show that the Stacked Generalization Ensemble Neural Network has faster convergence speed and higher recognition rate. Second, after discussing the advantage and disadvantage between different ensemble Neural Networks, suitable decision will be made for Robot Pet.
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