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Towards End-to-End Speech Recognition with Deep Multipath Convolutional Neural Networks

机译:借助深度多径卷积神经网络实现端到端语音识别

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Approaches to deep learning have been used all over in connection to Automatic Speech Recognition (ASR), where they have achieved a high level of accuracy. This has mostly been seen in Convolutional Neural Network (CNN) which has recently been investigated in ASR. Due to the fact that CNN has an increased network's depth on one branch, and may not be wide enough to work on capturing adequate features on signals of human speech. We focus on a proposal for an architecture that is deep and wide in CNN referred to as Multipath Convolutional Neural Network (MCNN). MCNN-CTC combines three additional paths with Connectionist Temporal Classification (CTC) objective function, and can be defined as an end-to-end system that has the ability to fully exploit spectral and temporal structures related to speech signals simultaneously. Results from the experiments show that the newly proposed MCNN-CTC structure enables a reduction in the error rate arising from the construction of end-to-end acoustic model. In the absence of a Language Model (LM), our proposed MCNN-CTC acoustic model has a relative reduction of 1.10%-12.08% comparing to the traditional HMM-based or DCNN-CTC-based models with strong generalization performance.
机译:深度学习方法已与自动语音识别(ASR)结合使用,在这些方法中,它们已经达到了很高的准确性。这在卷积神经网络(CNN)中最明显,最近在ASR中进行了研究。由于CNN在一个分支上的网络深度增加,并且可能不够宽,无法在人类语音信号上捕获足够的特征这一事实。我们专注于针对CNN中广泛而广泛的架构的提案,该架构被称为多路径卷积神经网络(MCNN)。 MCNN-CTC将三个附加路径与连接主义者的时间分类(CTC)目标函数结合在一起,可以定义为具有完全同时利用与语音信号相关的频谱和时间结构的能力的端到端系统。实验结果表明,新提出的MCNN-CTC结构可以降低端到端声学模型的构建引起的错误率。在没有语言模型(LM)的情况下,与具有强大泛化性能的传统基于HMM或基于DCNN-CTC的模型相比,我们提出的MCNN-CTC声学模型相对减少了1.10%-12.08%。

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