Spontaneous emotion recognition for Marathi Spoken Words

Vaibhav V. Kamble, B. P. Gaikwad, Deepak M. Rana
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引用次数: 7

Abstract

In this paper analysis of emotion recognition from Marathi speech signals by exploring several patterns for feature extraction techniques and classifiers to classify speech utterance according to their emotion contains. In this paper several method are extracting feature from speech signal to estimation of energy, intensity and pitch contour using Mel Frequency Cepstral Coefficient (MFCC). These feature parameters are extracted from Marathi speech Signals depend on speaker, spoken word as well as emotion. Gaussian mixture Models (GMM) is used to develop Emotion classification model. Each subject/Speaker has spoken 7 Marathi words with 6 different emotions that is 7 Marathi words are Aathawan, Aayusha, Chamakdar, Iishara, Manav, Namaskar, Uupay and 6 emotions are Angry, Happy, Sad, Fear, Neutral/Normal, and Surprise. This system is used for emotion recognition in Marathi Spoken Words by applied feature extraction techniques as MFCC and classification techniques as GMM. We got 83.33 % average accuracy rate and 16.67% average confusion rate of our system. For Male we got average accuracy rate is 85% and for female 81.66 %. This is the overall accuracy rate of our Emotion Recognition for Marathi Spoken Words (ERFMSW) system.
马拉地语口语的自发情感识别
本文对马拉地语语音信号的情感识别进行了分析,探索了特征提取技术和分类器的几种模式,根据情感内容对语音进行分类。本文采用几种方法从语音信号中提取特征,利用Mel频率倒谱系数(MFCC)估计语音信号的能量、强度和基音轮廓。这些特征参数是从马拉地语信号中提取出来的,这些特征参数取决于说话人、说话词和情绪。采用高斯混合模型(GMM)建立情绪分类模型。每个主题/演讲者都说了7个马拉地语单词,有6种不同的情绪,即7个马拉地语单词是Aathawan, Aayusha, Chamakdar, Iishara, Manav, Namaskar, Uupay和6种情绪是愤怒,快乐,悲伤,恐惧,中性/正常和惊讶。该系统应用特征提取技术MFCC和分类技术GMM对马拉地语口语进行情感识别。系统的平均准确率为83.33%,平均混淆率为16.67%。男性的平均准确率为85%,女性的平均准确率为81.66%。这是我们马拉地语口语情感识别(ERFMSW)系统的总体准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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