Tackling unseen acoustic conditions in query-by-example search using time and frequency convolution for multilingual deep bottleneck features

Julien van Hout, V. Mitra, H. Franco, C. Bartels, D. Vergyri
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引用次数: 2

Abstract

Standard keyword spotting based on Automatic Speech Recognition (ASR) cannot be used on low-and no-resource languages due to lack of annotated data and/or linguistic resources. In recent years, query-by-example (QbE) has emerged as an alternate way to enroll and find spoken queries in large audio corpora, yet mismatched and unseen acoustic conditions remain a difficult challenge given the lack of enrollment data. This paper revisits two neural network architectures developed for noise and channel-robust ASR, and applies them to building a state-of-art multilingual QbE system. By applying convolution in time or frequency across the spectrum, those convolutional bottlenecks learn more discriminative deep bottleneck features. In conjunction with dynamic time warping (DTW), these features enable robust QbE systems. We use the MediaEval 2014 QUESST data to evaluate robustness against language and channel mismatches, and add several levels of artificial noise to the data to evaluate performance in degraded acoustic environments. We also assess performance on an Air Traffic Control QbE task with more realistic and higher levels of distortion in the push-to-talk domain.
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针对多语言深度瓶颈特征,利用时间和频率卷积处理逐例查询搜索中未见的声学条件
由于缺乏注释数据和/或语言资源,基于自动语音识别(ASR)的标准关键字识别不能用于低资源和无资源语言。近年来,按例查询(QbE)已成为在大型音频语料库中登记和查找语音查询的替代方法,但由于缺乏登记数据,不匹配和看不见的声学条件仍然是一个困难的挑战。本文回顾了为噪声和信道鲁棒ASR开发的两种神经网络架构,并将它们应用于构建最先进的多语言QbE系统。通过在频谱上应用时间或频率上的卷积,这些卷积瓶颈学习到更多的判别深度瓶颈特征。结合动态时间规整(DTW),这些特性可以实现健壮的QbE系统。我们使用MediaEval 2014 QUESST数据来评估对语言和信道不匹配的鲁棒性,并在数据中添加几个级别的人工噪声来评估在退化声环境中的性能。我们还评估了一项空中交通管制QbE任务的性能,该任务在一键通领域具有更现实和更高水平的失真。
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