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Parametric-based non-intrusive speech quality assessment by deep neural network

机译:深神经网络的参数基非侵入式语音质量评估

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This paper proposes a deep neural network (DNN) based non-intrusive speech quality estimation method in real-time voice communication systems. Since the proposed method only utilizes real-time control protocol (RTCP) information in the receiver side and does not need a reference signal, it is possible to continuously monitor the quality of service (QoS). Unlike the conventional non-intrusive E-model system that predicts QoS by utilizing delay, jitter, and type of codec with a rule-based method, the proposed method actively estimates the non-linear relationship between multi-dimensional parameters of RTCP and subjectively motivated reference scores using a DNN structure. In order to select efficient features, the relationship between each parameter of RTCP and perceptual objective listening quality assessment (POLQA) is thoroughly investigated, then we train the DNN model by changing the number of layers and nodes. The proposed algorithm achieved 0.8693 correlation with 21,206 reference POLQA scores that are sampled from real environment.
机译:本文提出了一种深深的基于神经网络的实时语音通信系统的非侵入语音质量估计方法(DNN)。由于所提出的方法只利用在接收机侧的实时控制协议(RTCP)的信息,并且不需要参考信号,能够连续地监控​​的服务质量(QoS)的质量。不像通过利用延迟,抖动,和一个基于规则的方法的编解码器的类型预测的QoS的传统的非侵入式E-模型系统,所提出的方法积极地估计RTCP的多维参数和主观动机之间的非线性关系使用DNN结构参考分数。为了选择有效的特征,RTCP的每个参数和感知目标收听质量评估(POLQA)之间的关系被彻底调查,那么我们通过改变层和节点的数量训练DNN模型。该算法实现了0.8693的相关性与从真实环境采样21206参考POLQA分数。

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