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Classification of Telephone Signals With Use of Artificial Neural Networks

机译:使用人工神经网络对电话信号进行分类

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摘要

Automatic assessment of quality of voice and data transmission over telephone networks requires certain level of understanding of what types of signals are present on the line at each moment during which monitoring takes place. In particular, distinguishing whether the signal is a directly transmitted signal, or its echo, or just the line noise is a most desirable classification that must be performed prior to any subsequent analyses like, for example, those resulting from ITU recommendation G.168. In this paper we investigate suitability of neural networks for performing such categorisation. We search for low-cost network configurations that, after training, can reliably perform required classifications. A number of architectures of artificial neural networks are constructed, trained, tested and compared against each other. All presented experiments are performed with real telephone signals. The conclusions about the results are drawn and recommendations for further investigations are formulated.
机译:对电话网络上语音和数据传输质量的自动评估要求一定程度的了解,在进行监视的每个时刻,线路上会出现什么类型的信号。特别是,区分信号是直接传输的信号还是回声,还是仅是线路噪声是最合乎需要的分类,必须在任何后续分析(例如,根据ITU建议G.168进行的分析)之前执行。在本文中,我们研究了神经网络进行此类分类的适用性。我们寻求低成本的网络配置,这些网络配置经过培训后可以可靠地执行所需的分类。构造,训练,测试并相互比较了许多人工神经网络的体系结构。所有提出的实验均使用真实的电话信号进行。得出有关结果的结论,并提出进一步研究的建议。

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