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Group nonnegative matrix factorisation with speaker and session variability compensation for speaker identification

机译:扬声器识别的扬声器和会话变化补偿组非负矩阵分子

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This paper presents a feature learning approach for speaker identification that is based on nonnegative matrix factorisation. Recent studies have shown that with such models, the dictionary atoms can represent well the speaker identity. The approaches proposed so far focused only on speaker variability and not on session variability. However, this later point is a crucial aspect in the success of the I-vector approach that is now the state-of-the-art in speaker identification. This paper proposes a method that relies on group nonnegative matrix factorisation and that is inspired by the I-vector training procedure. By doing so the proposed approach intends to capture both the speaker variability and the session variability. Results on a small corpus prove that the proposed approach can be competitive with I-vectors.
机译:本文介绍了基于非负矩阵分子的扬声器识别的特征学习方法。最近的研究表明,通过这种模型,字典原子可以代表扬声器标识。到目前为止提出的方法仅集中在扬声器可变性上,而不是在会话变异性上。然而,这个稍后的观点是I形式方法的成功中的一个关键方面,现在是扬声器识别的最先进的。本文提出了一种依赖于组非环境矩阵分子的方法,并由I形式培训程序启发。通过这样做,拟议的方法打算捕捉扬声器变异性和会话变异性。结果小型语料库证明了所提出的方法可以与I-vOors竞争。

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