基于动态注意力的锚定语音说话人提取编解码器模型

Hao Li, Xueliang Zhang, Guanglai Gao
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引用次数: 1

摘要

语音在人机交互中起着重要的作用。对于许多实际应用来说,一个令人烦恼的问题是语音常常受到干扰噪声的影响。从背景干扰中提取目标语音是一项有意义且具有挑战性的任务,特别是当干扰也是人声时。本文解决了利用一段短锚定语音从干扰语音中提取目标说话人的问题,并利用锚定语音提取目标说话人。我们提出了一种编码器-解码器神经网络结构。具体而言,编码器将锚定语音转换为用于表示目标说话人身份的嵌入。解码器利用说话人身份从混合语音中提取目标语音。为了实现与声学相关的说话人身份识别,利用动态注意机制为混合图像的每一帧构建时变嵌入。系统评价表明我们的方法提高了说话人提取的质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic-attention based Encoder-decoder model for Speaker Extraction with Anchor speech
Speech plays an important role in human-computer interaction. For many real applications, an annoying problem is that speech is often degraded by interfering noise. Extracting target speech from background interference is a meaningful and challenging task, especially when interference is also human voice. This work addresses the problem of extracting target speaker from interfering speaker with a short piece of anchor speech which is used to obtain the target speaker identify. We propose a encoder-decoder neural network architecture. Specifically, the encoder transforms the anchor speech to a embedding which is used to represent the identity of target speaker. The decoder utilizes the speaker identity to extract the target speech from mixture. To make a acoustic-related speaker identity, The dynamic-attention mechanism is utilized to build a time-varying embedding for each frame of the mixture. Systematic evaluation indicates that our approach improves the quality of speaker extraction.
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