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首页> 外文期刊>Selected Topics in Signal Processing, IEEE Journal of >Improved Frequency Modulation Features for Multichannel Distant Speech Recognition
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Improved Frequency Modulation Features for Multichannel Distant Speech Recognition

机译:改进的调频功能可实现多通道远程语音识别

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Frequency modulation features capture the fine structure of speech formants that constitute beneficial to the traditional energy-based cepstral features by carrying supplementary information. Improvements have been demonstrated mainly in Gaussian mixture model (GMM)-hidden Markov model (HMM) systems for small and large vocabulary tasks. Yet, they have limited applications in deep neural network (DNN)-HMM systems and distant speech recognition (DSR) tasks. Herein, we elaborate on their integration within state-of-the-art front-end schemes that include post-processing of MFCCs resulting in discriminant and speaker-adapted features of large temporal contexts. We explore: 1) multichannel demodulation schemes for multi-microphone setups; 2) richer descriptors of frequency modulations; and 3) feature transformation and combination via hierarchical deep networks. We present results for tandem and hybrid recognition with GMM and DNN acoustic models, respectively. The improved modulation features are combined efficiently with MFCCs yielding modest and consistent improvements in multichannel DSR tasks on reverberant and noisy environments, where recognition rates are far from human performance.
机译:调频功能捕获了语音共振峰的精细结构,这些语音共振峰通过携带补充信息构成了对传统的基于能量的倒谱特性有利的结构。主要在针对小和大词汇量任务的高斯混合模型(GMM)-隐马尔可夫模型(HMM)系统中已证明了改进。但是,它们在深度神经网络(DNN)-HMM系统和远程语音识别(DSR)任务中的应用有限。在本文中,我们将详细介绍它们在最新的前端方案中的集成,这些方案包括对MFCC的后处理,从而导致大时态上下文的判别和说话者适应性特征。我们探索:1)用于多麦克风设置的多通道解调方案; 2)更丰富的频率调制描述符; 3)通过分层深度网络进行特征转换和组合。我们分别提供了GMM和DNN声学模型的串联和混合识别结果。改进的调制功能与MFCC有效地结合在一起,从而在混响和嘈杂的环境中对多通道DSR任务进行了适度且持续的改进,在这些环境中,识别率远非人类表现。

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