从混合语音中发现少量关键词

Junming Yuan, Ying Shi, LanTian Li, Dong Wang, Askar Hamdulla
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摘要

少量关键词抽取(KWS)旨在利用有限的训练样本检测未知关键词。一种常用的方法是预训练和微调框架。这种方法虽然在干净的条件下很有效,但在混合关键词检测方面却很吃力,即同时检测语篇中混合的多个关键词,这在实际应用中至关重要。之前的研究提出了一种混合训练(MT)方法来解决这个问题,但是这种方法从未在少量语料的情况下进行过测试。在本文中,我们研究了使用 MT 和其他相关方法一并解决两个实际挑战的可能性:少发语音和混合语音。在 LibriSpeech 和 Google Speech Command 语料库上进行的实验表明,无论是在预训练阶段还是在微调阶段,MT 在这项任务中都非常有效。此外,将基于 SSL 的大规模预训练(HuBert)与 MT 微调相结合,在所有测试条件下都能获得非常出色的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Few-Shot Keyword Spotting from Mixed Speech
Few-shot keyword spotting (KWS) aims to detect unknown keywords with limited training samples. A commonly used approach is the pre-training and fine-tuning framework. While effective in clean conditions, this approach struggles with mixed keyword spotting -- simultaneously detecting multiple keywords blended in an utterance, which is crucial in real-world applications. Previous research has proposed a Mix-Training (MT) approach to solve the problem, however, it has never been tested in the few-shot scenario. In this paper, we investigate the possibility of using MT and other relevant methods to solve the two practical challenges together: few-shot and mixed speech. Experiments conducted on the LibriSpeech and Google Speech Command corpora demonstrate that MT is highly effective on this task when employed in either the pre-training phase or the fine-tuning phase. Moreover, combining SSL-based large-scale pre-training (HuBert) and MT fine-tuning yields very strong results in all the test conditions.
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