Learning filter banks within a deep neural network framework

Tara N. Sainath, Brian Kingsbury, Abdel-rahman Mohamed, B. Ramabhadran
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引用次数: 170

Abstract

Mel-filter banks are commonly used in speech recognition, as they are motivated from theory related to speech production and perception. While features derived from mel-filter banks are quite popular, we argue that this filter bank is not really an appropriate choice as it is not learned for the objective at hand, i.e. speech recognition. In this paper, we explore replacing the filter bank with a filter bank layer that is learned jointly with the rest of a deep neural network. Thus, the filter bank is learned to minimize cross-entropy, which is more closely tied to the speech recognition objective. On a 50-hour English Broadcast News task, we show that we can achieve a 5% relative improvement in word error rate (WER) using the filter bank learning approach, compared to having a fixed set of filters.
在深度神经网络框架内学习滤波器组
梅尔滤波器组通常用于语音识别,因为它们是由与语音产生和感知相关的理论驱动的。虽然mel-filter bank衍生的特征非常受欢迎,但我们认为这个filter bank并不是一个合适的选择,因为它不是为手头的目标(即语音识别)而学习的。在本文中,我们探索用与深度神经网络的其余部分共同学习的滤波器组层替换滤波器组。因此,滤波器组被学习最小化交叉熵,这与语音识别目标更紧密地联系在一起。在一个50小时的英语广播新闻任务中,我们表明,与使用一组固定的过滤器相比,使用过滤器组学习方法,我们可以在单词错误率(WER)方面实现5%的相对改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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