噪声语音鲁棒情绪识别的无监督帧选择技术

Meghna Pandharipande, Rupayan Chakraborty, Ashish Panda, Sunil Kumar Kopparapu
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引用次数: 10

摘要

对纯净语音的自动情绪识别具有良好的准确性,但当语音被噪声污染时,自动情绪识别的准确性会迅速下降。在本文中,我们提出了一种基于前端语音活动检测器(VAD)的无监督方法来选择语音中信噪比(SNR)相对较好的帧。然后,我们利用最先进的分类器从低级音频描述符中提取大量的统计特征,用于情感识别。从Noisex-92噪声数据库中提取5种不同信噪比水平(0、5、10、15、20dB)的噪声(Babble、F-16、Factory、Volvo和HF-channel),在两个标准数据库中进行了广泛的实验。在进行所有在分类和维度空间对情绪进行分类的实验时,所提出的技术在所有5种类型和级别的噪音以及两个数据库中都优于基于循环神经网络(RNN)的VAD。
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An Unsupervised frame Selection Technique for Robust Emotion Recognition in Noisy Speech
Automatic emotion recognition with good accuracy has been demonstrated for clean speech, but the performance deteriorates quickly when speech is contaminated with noise. In this paper, we propose a front-end voice activity detector (VAD)-based unsupervised method to select the frames with a relatively better signal to noise ratio (SNR) in the spoken utterances. Then we extract a large number of statistical features from low-level audio descriptors for the purpose of emotion recognition by using state-of-art classifiers. Extensive experimentation on two standard databases contaminated with 5 types of noise (Babble, F-16, Factory, Volvo, and HF-channel) from the Noisex-92 noise database at 5 different SNR levels (0, 5, 10, 15, 20dB) have been carried out. While performing all experiments to classify emotions both at the categorical and the dimensional spaces, the proposed technique outperforms a Recurrent Neural Network (RNN)-based VAD across all 5 types and levels of noises, and for both the databases.
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