基于深度卷积神经网络结构的语音影响检测

Saikat Basu, Jaybrata Chakraborty, Md. Aftabuddin
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引用次数: 3

摘要

近年来,人们对语音信号的情感检测和情感识别进行了大量的研究。研究人员一直致力于从语音信号中发现不同的情感内容,他们尝试从语音中提取不同的特征,并使用不同类型的监督或无监督学习方法来训练网络,从而开发出能够成功地从语音信号中识别情感的模型。情感识别面临的主要挑战是情感语料库(语音数据库)的选择、语音特征的识别以及分类模型的选择。在这项工作中,我们探索了RML情感语音语料库,用于我们的实验目的,它是不同语言的情感视听文件的集合。分析了以mel -谱图为特征的深度卷积神经网络在情绪识别中的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Affect Detection from Speech using Deep Convolutional Neural Network Architecture
From last few years there are many research works have been done on the field of affect detection or emotion recognition from speech signal. Researchers has been directed to find out different emotional content from speech signals, they have tried to extract different features from speech and used different types of supervised or unsupervised learning methods to train a network such a way that a model can be developed which can identify emotion from speech signal successfully. The primary challenges of emotion recognition are choosing the emotional speech corpus (speech database), identification of different features related to speech and an appropriate choice of a classification model. In this work we have explored RML emotional speech corpus for our experiment purpose it is a collection of emotional audiovisual files of different languages. We have analyzed the performance of Deep Convolutional Neural Network with Mel-Spectrogram as features for recognition of emotion.
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