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Robust Cochlear-Model-Based Speech Recognition

机译:基于强大的Cochlear模型的语音识别

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摘要

Accurate speech recognition can provide a natural interface for human–computer interaction. Recognition rates of the modern speech recognition systems are highly dependent on background noise levels and a choice of acoustic feature extraction method can have a significant impact on system performance. This paper presents a robust speech recognition system based on a front-end motivated by human cochlear processing of audio signals. In the proposed front-end, cochlear behavior is first emulated by the filtering operations of the gammatone filterbank and subsequently by the Inner Hair cell (IHC) processing stage. Experimental results using a continuous density Hidden Markov Model (HMM) recognizer with the proposed Gammatone Hair Cell (GHC) coefficients are lower for clean speech conditions, but demonstrate significant improvement in performance in noisy conditions compared to standard Mel-Frequency Cepstral Coefficients (MFCC) baseline.
机译:准确的语音识别可以为人机交互提供自然界面。现代语音识别系统的识别率高度依赖于背景噪声水平,声学特征提取方法的选择可以对系统性能产生显着影响。本文提出了一种基于音频信号人的人工耳机处理的前端的强大语音识别系统。在所提出的前端,首先通过γ滤波器的过滤操作和随后由内毛细胞(IHC)处理阶段仿真耳蜗行为。使用连续密度隐马尔可夫模型(HMM)识别器的实验结果具有拟议的γ致密细胞(GHC)系数的清洁语音条件较低,但与标准熔体频率跳跃系数(MFCC)相比,在嘈杂的条件下表现出显着提高基线。

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