Acoustic Model Adaptation In Reverberant Conditions Using Multi-task Learned Embeddings

Aditya Raikar, Meet H. Soni, Ashish Panda, S. Kopparapu
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Abstract

Acoustic environment plays a major role in the performance of a large-scale Automatic Speech Recognition (ASR) system. It becomes a lot more challenging when substantial amount of distortions, such as background noise and reverberations are present. Of late, it has been standard to use i-vectors for Acoustic Model (AM) adaptation. Embeddings from Single Task Learned (STL) neural network systems, such as x-vectors and r-vectors, have also been used to a varying degree of success. This paper proposes the use of Multi Task Learned (MTL) embeddings for large vocabulary hybrid acoustic model adaptation in reverberant environments. MTL embeddings are extracted from an affine layer of the deep neural network trained on multiple tasks such as speaker information and room information. Our experiments show that the proposed MTL embeddings outperform i-vectors, x-vectors and r-vectors for AM adaptation in reverberant conditions. Besides, it has been demonstrated that the proposed MTL-embeddings can be fused with i-vectors to provide further improvement. We provide results on artificially reverberated Librispeech data as well as real world reverberated HRRE data. On Librispeech database, the proposed method provides an improvement of 10.9% and 8.7% relative to i-vector in reverberated test-clean and test-other data respectively, while an improvement of 7% is observed relative to i-vector when the proposed system is tested on HRRE dataset.
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基于多任务学习嵌入的混响条件下声学模型自适应
声环境对大规模自动语音识别系统的性能起着至关重要的作用。当大量的失真,如背景噪音和混响存在时,它变得更具挑战性。最近,使用i向量进行声学模型(AM)适配已成为标准。来自单任务学习(STL)神经网络系统的嵌入,如x向量和r向量,也已被用于不同程度的成功。本文提出了在混响环境下使用多任务学习(MTL)嵌入来适应大词汇混合声学模型。MTL嵌入是从深度神经网络的仿射层中提取的,深度神经网络是在多个任务(如说话者信息和房间信息)上训练的。我们的实验表明,在混响条件下,所提出的MTL嵌入在调幅适应方面优于i向量、x向量和r向量。此外,还证明了所提出的mtl嵌入可以与i向量融合,以提供进一步的改进。我们提供了人工混响librisspeech数据和真实世界混响HRRE数据的结果。在librisspeech数据库上,该方法在混响test-clean和test-other数据上相对于i-vector分别提高了10.9%和8.7%,在HRRE数据集上相对于i-vector提高了7%。
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