Analysis on Speech-Emotion Recognition with Effective Feature Combination

S. Patra, Sujoy Datta, M. Roy
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引用次数: 1

Abstract

Speech-Emotion Recognition, (SER) is the process of attempting to recognize the emotional aspects of speech and the affective states irrespective of the semantic contents of the speech. This is to make capital out of the fact that underlying emotions are often reflected in the voice of a person. While studying speech-emotion recognition, it is a pertinent issue to find the combination of the audio features that we can extract from the speech and see which combination falls into place perfectly with a suitable classification system. But having a well-defined database for speech analysis and research is as much important to SER study. Hence, we have used the RAVDESS dataset. In our study we have used acoustic features that can reflect well-defined and sharp changes in emotional expression; for this we have extracted features like Amplitude Envelope, RMS and more from the time-domain, Spectral Centroid, Spectral bandwidth and more from the frequency-domain and Mel-frequency cepstrum coefficients and more from the time-frequency domain. We have used the MLPClassifier for the classification of emotions. Our results show that a combination of MFCC, mel spectrogram and chroma is able to best explain the speech emotions through the MLPClassifier.
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基于有效特征组合的语音-情感识别分析
语音情感识别(SER)是一种尝试识别语音的情感方面和情感状态的过程,而不考虑语音的语义内容。这是为了利用一个事实,即潜在的情绪往往反映在一个人的声音中。在研究语音-情感识别时,找到我们可以从语音中提取的音频特征的组合,并看看哪种组合与合适的分类系统完美地结合在一起是一个相关的问题。但是,拥有一个定义良好的语音分析和研究数据库对SER研究同样重要。因此,我们使用了RAVDESS数据集。在我们的研究中,我们使用声学特征来反映情绪表达的明确和尖锐的变化;为此,我们从时域提取了振幅包络、均方根等特征,从频域提取了频谱质心、频谱带宽,从频域提取了频谱倒谱系数,从时频域提取了频谱系数。我们使用了MLPClassifier对情绪进行分类。我们的研究结果表明,MFCC、mel谱图和色度的组合能够通过MLPClassifier最好地解释语音情绪。
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