Dual Attention Pooling Network for Recording Device Classification Using Neutral and Whispered Speech

Abinay Reddy Naini, B. Singhal, P. Ghosh
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引用次数: 1

Abstract

In this work, we proposed a method for recording device classification using the recorded speech signal. With the rapid increase in different mobile and professional recording devices, determining the source device has many applications in forensics and in further improving various speech-based applications. This paper proposes dual and single attention pooling-based convolutional neural networks (CNN) for recording device classification using neutral and whispered speech. Experiments using five recording devices with simultaneous direct recordings from 88 speakers speaking both in neutral and whisper and recordings from 21 mobile devices with simultaneous playback recordings reveal that the proposed dual attention pooling based CNN method performs better than the best baseline scheme. We show that we achieve a better performance in recording device classification with whispered speech recordings than corresponding neutral speech. We also demonstrate the importance of voiced/unvoiced speech and different frequency bands in classifying the recording devices.
基于中性和耳语语音的录音设备分类双注意池网络
在这项工作中,我们提出了一种利用录制语音信号对录音设备进行分类的方法。随着各种移动和专业录音设备的快速增加,确定源设备在取证和进一步改进各种基于语音的应用中有许多应用。本文提出了基于双注意池和单注意池的卷积神经网络(CNN),用于录音设备分类。通过5台录音设备和21台同时播放录音的移动设备进行的实验表明,基于双重注意池的CNN方法比最佳基线方案表现更好。我们的研究表明,与相应的中性语音相比,我们在录音设备分类中取得了更好的性能。我们还论证了浊音/浊音和不同频带对录音设备分类的重要性。
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