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首页> 外文期刊>IEEE Transactions on Neural Networks >Hierarchical Singleton-Type Recurrent Neural Fuzzy Networks for Noisy Speech Recognition
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Hierarchical Singleton-Type Recurrent Neural Fuzzy Networks for Noisy Speech Recognition

机译:分层单例类型递归神经模糊网络用于嘈杂语音识别

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This paper proposes noisy speech recognition using hierarchical singleton-type recurrent neural fuzzy networks (HSRNFNs). The proposed HSRNFN is a hierarchical connection of two singleton-type recurrent neural fuzzy networks (SRNFNs), where one is used for noise filtering and the other for recognition. The SRNFN is constructed by recurrent fuzzy if-then rules with fuzzy singletons in the consequences, and their recurrent properties make them suitable for processing speech patterns with temporal characteristics. In n words recognition, n SRNFNs are created for modeling n words, where each SRNFN receives the current frame feature and predicts the next one of its modeling word. The prediction error of each SRNFN is used as recognition criterion. In filtering, one SRNFN is created, and each SRNFN recognizer is connected to the same SRNFN filter, which filters noisy speech patterns in the feature domain before feeding them to the SRNFN recognizer. Experiments with Mandarin word recognition under different types of noise are performed. Other recognizers, including multilayer perceptron (MLP), time-delay neural networks (TDNNs), and hidden Markov models (HMMs), are also tested and compared. These experiments and comparisons demonstrate good results with HSRNFN for noisy speech recognition tasks
机译:本文提出了使用分层单例型递归神经模糊网络(HSRNFN)的嘈杂语音识别。提出的HSRNFN是两个单例型递归神经模糊网络(SRNFN)的层次结构连接,其中一个用于噪声过滤,另一个用于识别。 SRNFN由具有后果的模糊单例的递归模糊if-then规则构造,并且其递归属性使其适合于处理具有时间特征的语音模式。在n个单词识别中,创建了n个SRNFN用于对n个单词进行建模,其中每个SRNFN接收当前的帧特征并预测其建模单词的下一个。每个SRNFN的预测误差都用作识别标准。在过滤中,创建了一个SRNFN,并且每个SRNFN识别器都连接到相同的SRNFN过滤器,该过滤器在将特征语音域中的嘈杂语音模式提供给SRNFN识别器之前对其进行过滤。在不同类型的噪音下进行普通话单词识别的实验。还测试并比较了其他识别器,包括多层感知器(MLP),时延神经网络(TDNN)和隐马尔可夫模型(HMM)。这些实验和比较证明了HSRNFN在嘈杂的语音识别任务中的良好效果

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