卷积神经网络用于ASR

Sourav Newatia, R. Aggarwal
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引用次数: 3

摘要

在自动语音识别中,范式已经从统计模型(GMM-HMM)转向深度神经网络。在各种类型的深度神经网络架构中,cnn得到了最广泛的应用和考虑。cnn有许多高级特性,如权重共享、局部过滤器和池化等。理想的池化方法是期望只提取有用的信息而丢弃不相关的细节。Pooling是CNN中需要突出的一个重要组成部分。因此,为了理解和选择最好的池化技术,本文旨在对cnn架构中应用的不同类型的池化技术进行广泛的调查。本文还将总结cnn的改进,包括cnn的关键属性,cnn的架构。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Convolutional Neural Network for ASR
In Automatic speech recognition paradigm has been shifted from statistical model (GMM-HMM) to deep neural network. Among various types of Deep neural networks architecture, CNNs have been most broadly used and considered. There are many advanced features in CNNs like weight sharing, local filters and pooling etc. An ideal pooling method is to be expected to extract only useful information and discards irrelevant details. Pooling is an important component of CNN to be highlighted. Hence, to understand and select the best pooling technique, this paper aims to provide a broad survey on different types of pooling techniques applied in CNNs architecture. This paper will also summarize the improvements of CNNs, including key properties of CNNs, architecture of CNNs.
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