Factored adaptation for separable compensation of speaker and environmental variability

M. Seltzer, A. Acero
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引用次数: 16

Abstract

While many algorithms for speaker or environment adaptation have been proposed, far less attention has been paid to approaches which address both factors. We recently proposed a method called factored adaptation that can jointly compensate for speaker and environmental mismatch using a cascade of CMLLR transforms that separately compensate for the environment and speaker variability. Performing adaptation in this manner enables a speaker transform estimated in one environment to be be applied when the same user is in different environments. While this algorithm performed well, it relied on knowledge of the operating environment in both training and test. In this paper, we show how unsupervised environment clustering can be used to eliminate this requirement. The improved factored adaptation algorithm achieves relative improvements of 10–18% over conventional CMLLR when applying speaker transforms across environments without needing any additional a priori knowledge.
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说话人与环境可变性可分离补偿的因子自适应
虽然已经提出了许多针对说话人或环境适应的算法,但对同时解决这两个因素的方法的关注远远不够。我们最近提出了一种称为因子自适应的方法,该方法可以使用cmlr变换级联来分别补偿环境和说话人的可变性,从而共同补偿说话人和环境的不匹配。以这种方式执行自适应,可以将在一个环境中估计的说话人变换应用于同一用户在不同环境中的情况。虽然该算法在训练和测试中表现良好,但它依赖于对操作环境的了解。在本文中,我们展示了如何使用无监督环境聚类来消除这一需求。改进的因子自适应算法在不需要任何额外的先验知识的情况下,在跨环境应用说话人变换时,比传统的cmlr算法实现了10-18%的相对改进。
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