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Self-Adjustable Neural Network for speech recognition

机译:自适应神经网络用于语音识别

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摘要

Neural networks with fixed input length are not able to train and test data with variable lengths in one network size. This issue is very crucial when the neural networks need to deal with signals of variable lengths, such as speech. Though various methods have been proposed in segmentation and feature extraction to deal with variable lengths of the data, the size of the input data to the neural networks still has to be fixed. A novel Self-Adjustable Neural Network (SANN) is presented in this paper, to enable the network to adjust itself according to different data input sizes. The proposed method is applied to the speech recognition of Malay vowels and TIMIT isolated words. SANN is benchmarked against the standard and state-of-the-art recogniser, Hidden Markov Model (HMM). The results showed that SANN was better than HMM in recognizing the Malay vowels. However, HMM outperformed SANN in recognising the TIMIT isolated words.
机译:输入长度固定的神经网络无法在一种网络大小中训练和测试长度可变的数据。当神经网络需要处理可变长度的信号(例如语音)时,此问题至关重要。尽管在分割和特征提取中已经提出了各种方法来处理可变长度的数据,但是神经网络输入数据的大小仍然必须固定。本文提出了一种新颖的自我调整神经网络(SANN),以使网络能够根据不同的数据输入大小进行自我调整。将该方法应用于马来元音和TIMIT孤立词的语音识别。 SANN相对于标准和最新的识别器隐马尔可夫模型(HMM)进行了基准测试。结果表明,SANN在识别马来元音方面优于HMM。但是,HMM在识别TIMIT隔离词方面胜过SANN。

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