Towards a Non-Intrusive Context-Aware Speech Quality Model

R. Jaiswal, Andrew Hines
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引用次数: 3

Abstract

Understanding how humans judge perceived speech quality while interacting through Voice over Internet Protocol (VoIP) applications in real-time is essential to build a robust and accurate speech quality prediction model. Speech quality is degraded in the presence of background noise reducing the Quality of Experience (QoE). Speech Enhancement (SE) algorithms can improve speech quality in noisy environments. The publicly available NOIZEUS speech corpus contains speech in environmental background noise babble, car, street, and train at two Signal-to-noise ratio (SNRs) 5dB and 10dB. Objective Speech Quality Metrics (OSQM) are used to monitor and measure speech quality for VoIP applications. This paper proposes a Context-aware QoE prediction model, CAQoE, which classifies the speech signal context (i.e., noise type and SNR) in order to allow context-specific speech quality prediction. This paper presents experiments conducted to develop the speech context-classification component of the proposed CAQoE model. Speech enhancement algorithms are used in conjunction with an OSQM to estimate Mean Opinion Score (MOS) of noisy and enhanced samples in order to train Machine Learning (ML) classifiers to classify the speech signal context (i.e., noise type and SNR). Results demonstrate that a Decision Tree (DT) classifier has better classification accuracy for the noise classes tested. We present the associated components of the CAQoE model, namely; Voice Activity Detection (VAD) and Speech Quality Model (SQM).
面向非侵入式上下文感知语音质量模型
了解人类如何在通过互联网语音协议(VoIP)应用程序进行实时交互时判断感知语音质量,对于构建鲁棒和准确的语音质量预测模型至关重要。在背景噪声的存在下,语音质量会下降,从而降低体验质量(QoE)。语音增强(SE)算法可以提高噪声环境下的语音质量。公开的NOIZEUS语音语料库包含环境背景噪声、汽车、街道和火车中的语音,信噪比分别为5dB和10dB。目的OSQM (Speech Quality Metrics)用于监控和测量VoIP应用的语音质量。本文提出了一种上下文感知的语音质量预测模型CAQoE,该模型对语音信号上下文(即噪声类型和信噪比)进行分类,从而实现特定于上下文的语音质量预测。本文介绍了开发所提出的CAQoE模型的语音上下文分类组件的实验。语音增强算法与OSQM结合使用来估计噪声和增强样本的平均意见分数(MOS),以训练机器学习(ML)分类器对语音信号上下文(即噪声类型和信噪比)进行分类。结果表明,决策树(DT)分类器对测试的噪声类别具有较好的分类精度。我们提出了CAQoE模型的相关组件,即;语音活动检测(VAD)和语音质量模型(SQM)。
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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