Towards Scaling Up Classification-Based Speech Separation

Yuxuan Wang, Deliang Wang
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引用次数: 435

Abstract

Formulating speech separation as a binary classification problem has been shown to be effective. While good separation performance is achieved in matched test conditions using kernel support vector machines (SVMs), separation in unmatched conditions involving new speakers and environments remains a big challenge. A simple yet effective method to cope with the mismatch is to include many different acoustic conditions into the training set. However, large-scale training is almost intractable for kernel machines due to computational complexity. To enable training on relatively large datasets, we propose to learn more linearly separable and discriminative features from raw acoustic features and train linear SVMs, which are much easier and faster to train than kernel SVMs. For feature learning, we employ standard pre-trained deep neural networks (DNNs). The proposed DNN-SVM system is trained on a variety of acoustic conditions within a reasonable amount of time. Experiments on various test mixtures demonstrate good generalization to unseen speakers and background noises.
扩大基于分类的语音分离
将语音分离作为一个二元分类问题已被证明是有效的。虽然使用核支持向量机(svm)在匹配测试条件下获得了良好的分离性能,但在涉及新扬声器和环境的非匹配条件下的分离仍然是一个很大的挑战。一种简单而有效的方法是在训练集中加入许多不同的声学条件。然而,由于计算的复杂性,大规模训练对于核机来说几乎是难以处理的。为了能够在相对较大的数据集上进行训练,我们建议从原始声学特征中学习更多的线性可分和判别特征,并训练线性支持向量机,这比核支持向量机更容易和更快地训练。对于特征学习,我们使用标准的预训练深度神经网络(dnn)。提出的DNN-SVM系统在合理的时间内对各种声学条件进行了训练。对各种测试混合物的实验表明,对未见的说话者和背景噪声具有良好的泛化性。
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来源期刊
IEEE Transactions on Audio Speech and Language Processing
IEEE Transactions on Audio Speech and Language Processing 工程技术-工程:电子与电气
自引率
0.00%
发文量
0
审稿时长
24.0 months
期刊介绍: The IEEE Transactions on Audio, Speech and Language Processing covers the sciences, technologies and applications relating to the analysis, coding, enhancement, recognition and synthesis of audio, music, speech and language. In particular, audio processing also covers auditory modeling, acoustic modeling and source separation. Speech processing also covers speech production and perception, adaptation, lexical modeling and speaker recognition. Language processing also covers spoken language understanding, translation, summarization, mining, general language modeling, as well as spoken dialog systems.
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