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Nearest neighbor based i-vector normalization for robust speaker recognition under unseen channel conditions

机译:基于邻邻的I形载体归一化,用于在看不见的频道条件下的强大扬声器识别

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Many state-of-the-art speaker recognition engines use i-vectors to represent variable-length acoustic signals in a fixed low-dimensional total variability subspace. While such systems perform well under seen channel conditions, their performance greatly degrades under unseen channel scenarios. Accordingly, rapid adaptation of i-vector systems to unseen conditions has recently attracted significant research effort from the community. To mitigate this mismatch, in this paper we propose nearest neighbor based i-vector mean normalization (NN-IMN) and i-vector smoothing (IS) for unsupervised adaptation to unseen channel conditions within a state-of-the-art i-vector/PLDA speaker verification framework. A major advantage of the approach is its ability to handle multiple unseen channels without explicit retraining or clustering. Our observations on the DARPA Robust Automatic Transcription of Speech (RATS) speaker recognition task suggest that part of the distortion caused by an unseen channel may be modeled as an offset in the i-vector space. Hence, the proposed nearest neighbor based normalization technique is formulated to compensate for such a shift. Experimental results with the NN based normalized i-vectors indicate that, on average, we can recover 46% of the total performance degradation due to unseen channel conditions.
机译:许多最先进的扬声器识别引擎使用I-Vovers表示固定的低维总变性子空间中的可变长度声信号。虽然这种系统在视通道条件下表现良好,但它们的性能在看不见的频道场景下大大降低。因此,最近对揭露病情的快速适应未来的情况,最近吸引了社区的显着研究努力。为了减轻这种不匹配,本文提出了基于最近的邻居I - 载体的归一化(NN-IMN)和I - 矢量平滑(IS),用于在最先进的I-向量中对未经监督的渠道条件进行无监督的适应/ PLDA扬声器验证框架。该方法的主要优点是它能够处理多个看不见的频道而不明确刷新或聚类。我们对语音(大鼠)扬声器识别任务的DARPA稳健自动转录的观察表明,由未经看不见的信道引起的失真部分可以在I - 矢量空间中建模。因此,配制了所提出的最近邻的归一化技术以补偿这种偏移。基于NN的归一化I-载体的实验结果表明,平均而言,我们可以恢复由于看不见的信道条件而恢复总业绩劣化的46%。

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