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Statistical Model-Based Noise Reduction Approach for Car Interior Applications to Speech Recognition

机译:基于统计模型的汽车内饰语音识别降噪方法

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摘要

This paper presents a statistical model-based noise suppression approach for voice recognition in a car environment In order to alleviate the spectral whitening and signal distortion problem in the traditional decision-directed Wiener filter, we combine a decision-directed method with an original spectrum reconstruction method and develop a new two-stage noise reduction filter estimation scheme. When a tradeoff between the performance and computational efficiency under resource-constrained automotive devices is considered, ETSI standard advance distributed speech recognition font-end (ETSI-AFE) can be an effective solution, and ETSI-AFE is also based on the decision-directed Wiener filter. Thus, a series of voice recognition and computational complexity tests are conducted by comparing the proposed approach with ETSI-AFE. The experimental results show that the proposed approach is superior to the conventional method in terms of speech recognition accuracy, while the computational cost and frame latency are significantly reduced.
机译:本文提出了一种基于统计模型的噪声抑制方法,用于在汽车环境中进行语音识别。为缓解传统决策导向维纳滤波器中的频谱白化和信号失真问题,我们将决策导向方法与原始频谱重构相结合方法并开发一种新的两级降噪滤波器估计方案。当考虑在资源受限的汽车设备下性能和计算效率之间进行权衡时,ETSI标准高级分布式语音识别字体结束(ETSI-AFE)可能是有效的解决方案,并且ETSI-AFE也基于决策导向维纳过滤器。因此,通过将提出的方法与ETSI-AFE进行比较,进行了一系列语音识别和计算复杂性测试。实验结果表明,该方法在语音识别精度上优于传统方法,同时显着降低了计算成本和帧等待时间。

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