语音情绪的谱图表征与分类

H. Palo, Sangeet Sagar
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引用次数: 3

摘要

本研究试图利用声谱图对言语情绪进行表征和分类。首先,它从每个情感话语的原始语音谱图图像中提取单个红、绿、蓝参数。此外,它计算单个RGB组件的统计参数来表征所选择的情绪状态。愤怒、快乐、中性和悲伤情绪状态的话语来自标准柏林数据库(EMO-DB)。个体统计R, G和B谱图参数被发现在一种情绪中以及在不同的情绪状态中是不同的。因此,这些值被用作不同的特征集,使用流行的多层感知器神经网络(MLPNN)对指定的情绪状态进行分类。
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Characterization and Classification of Speech Emotion with Spectrograms
The work attempts to characterize and classify speech emotions using the spectrogram. Initially, it extracts the individual Red, Green, and Blue parameters from the raw speech spectrogram image of every individual emotional utterance. Further, it computes the statistical parameters of individual RGB components to characterize the chosen emotional states. The utterances of anger, happiness, neutral, and sad emotional states from the standard Berlin (EMO-DB) database has been used for this purpose. The individual statistical R, G, and B spectrogram parameters are found to be different within an emotion as well as across emotional states. Thus, these values have been used as different feature sets to classify the designated emotional states using the popular Multilayer Perceptron Neural Network (MLPNN).
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