基于cnn的短话语文本独立自动说话人识别

Mandana Fasounaki, Emirhan Burak Yüce, Serkan öncül, G. Ince
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引用次数: 2

摘要

随着语音控制服务和设备的广泛使用,开发鲁棒、快速的自动说话人识别系统的研究已经加速。在本文中,我们提出了一种卷积神经网络(CNN)架构,用于文本无关的自动说话人识别。主要目的是用一个简短的讲话片段来识别说话者。目前大多数研究都集中在深度cnn上,它最初是为计算机视觉任务设计的。此外,大多数现有的说话人识别方法在查询阶段需要超过3秒的音频样本才能达到较高的准确率。我们创建了一个适合于语音和语音相关分类任务的CNN架构。我们提出了一个优化模型,在我们的实验中,仅使用1秒的测试话语,在librisspeech上达到99.5%的准确率,在VoxCeleb 1数据集上达到90%的准确率。
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CNN-based Text-independent Automatic Speaker Identification Using Short Utterances
With the widespread use of voice-controlling services and devices, the research for developing robust and fast systems for automatic speaker identification had accelerated. In this paper, we present a Convolutional Neural Network (CNN) architecture for text-independent automatic speaker identification. The primary purpose is to identify a speaker, among many others, using a short speech segment. Most of the current researches focus on deep CNNs, which were initially designed for computer vision tasks. Besides, most of the existing speaker identification methods require audio samples longer than 3 seconds in the query phase for achieving a high accuracy. We created a CNN architecture appropriate for voice and speech-related classification tasks. We propose an optimum model that achieves 99.5% accuracy on LibriSpeech and 90% accuracy on VoxCeleb 1 dataset using only 1-second test utterances in our experiments.
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