Monaural speaker separation using source-contrastive estimation

Cory Stephenson, P. Callier, Abhinav Ganesh, Karl S. Ni
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引用次数: 3

Abstract

We propose an algorithm to separate simultaneously speaking persons from each other, the “cocktail party problem”, using a single microphone. Our approach involves a deep recurrent neural networks regression to a vector space that is descriptive of independent speakers. Such a vector space can embed empirically determined speaker characteristics and is optimized by distinguishing between speaker masks. We call this technique source-contrastive estimation. The methodology is inspired by negative sampling, which has seen success in natural language processing, where an embedding is learned by correlating and decorrelating a given input vector with output weights. Although the matrix determined by the output weights is dependent on a set of known speakers, we only use the input vectors during inference. Doing so will ensure that source separation is explicitly speaker-independent. Our approach is similar to recent deep neural network clustering and permutation-invariant training research; we use weighted spectral features and masks to augment individual speaker frequencies while filtering out other speakers. We avoid, however, the severe computational burden of other approaches with our technique. Furthermore, by training a vector space rather than combinations of different speakers or differences thereof, we avoid the so-called permutation problem during training. Our algorithm offers an intuitive, computationally efficient response to the cocktail party problem, and most importantly boasts better empirical performance than other current techniques.
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基于源对比估计的单耳说话人分离
我们提出了一种算法来区分同时说话的人彼此,“鸡尾酒会问题”,使用一个麦克风。我们的方法涉及深度递归神经网络回归到描述独立说话者的向量空间。这样的向量空间可以嵌入经验确定的说话人特征,并通过区分说话人掩模进行优化。我们称这种技术为源对比估计。该方法受到负抽样的启发,负抽样在自然语言处理中取得了成功,其中嵌入是通过将给定的输入向量与输出权重进行相关和解相关来学习的。虽然由输出权重决定的矩阵依赖于一组已知的说话者,但我们在推理过程中只使用输入向量。这样做将确保源分离是显式独立于说话者的。我们的方法类似于最近的深度神经网络聚类和排列不变训练研究;我们使用加权频谱特征和掩模来增加单个扬声器的频率,同时过滤掉其他扬声器。然而,我们用我们的技术避免了其他方法的严重计算负担。此外,通过训练向量空间而不是不同说话者的组合或差异,我们避免了训练过程中所谓的排列问题。我们的算法为鸡尾酒会问题提供了一个直观的、计算效率高的响应,最重要的是,它比其他现有技术具有更好的经验性能。
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