基于双重注意机制的语言识别研究

Mijit Ablimit, Ma Xueli, A. Hamdulla
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引用次数: 1

摘要

语言识别是语音技术的一个重要分支。语言识别的一个关键问题是如何从给定的语音中提取有效的语音片段表示并提高模型的性能。近年来,深度学习在语言识别的应用方面取得了重大进展。利用神经网络可以提取相关特征,有效提高系统性能。为了解决特征提取能力差、识别率低的问题,本文将特征与模型相结合,通过MFCC、Fbank等特征的比较,确定谱图作为最佳的输入特征,提出了一种基于双注意机制的语言识别方法。该方法首先将语音频谱图的频谱图转换为灰度谱图作为输入,利用多层卷积神经网络捕获局部特征,通过CBAM模块提取特征图在通道和空间维度上的双重注意,用双向门控循环单元捕获时间特征,然后将局部特征和时序特征共同传递到全连通层。并使用全连接层输出语言类。本文在通用语音数据集和AP17-OLR数据集上进行了实验,结果表明,双注意机制的语言识别方法能够取得较好的效果,增加了特征提取能力,提高了语言识别的性能。
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Language Identification Research Based on Dual Attention Mechanism
Language identification(LID) is an important branch of speech technology. A key problem of language identification is how to extract effective speech segment representation from a given speech and improve the model performance. In recent years, deep learning has made significant progress in the application of language identification. Neural networks can be used to extract relevant features and effectively improve system performance. In order to solve the problem of poor feature extraction ability and low recognition rate, this paper considers both features and models, through the comparison of features such as MFCC, Fbank to determine spectrogram as the best input feature, and proposes a language identification method based on dual attention mechanism. This method first takes the spectrogram of the speech spectrogram, and converts it into a gray-scale spectrogram as input, uses a multi-level convolutional neural network to capture local features, extracts dual attention in channel and spatial dimension of the feature map through the CBAM module, catches temporal characteristics with bidirectional gated recurrent units, then transfers the local characteristics and timing characteristics jointly to a fully connected layer, and uses the fully connected layer to output language classes. This paper conducts experiments on the Common voice dataset and AP17-OLR dataset, it demonstrates that dual attention mechanism’s language identification method can achieve good results, increase the feature extraction ability and improve the performance of language identification.
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