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首页> 外文期刊>IEICE Transactions on Information and Systems >PS-ZCPA Based Feature Extraction with Auditory Masking, Modulation Enhancement and Noise Reduction for Robust ASR
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PS-ZCPA Based Feature Extraction with Auditory Masking, Modulation Enhancement and Noise Reduction for Robust ASR

机译:基于PS-ZCPA的特征提取,具有听觉掩蔽,调制增强和降噪功能,可实现可靠的ASR

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摘要

A pitch-synchronous (PS) auditory feature extraction method based on ZCPA (Zero-Crossings Peak-Amplitudes) was proposed previously and showed more robustness over a conventional ZCPA and MFCC based features. In this paper, firstly, a non-linear adaptive threshold adjustment procedure is introduced into the PS-ZCPA method to get optimal results in noisy conditions with different signal-to-noise ratio (SNR). Next, auditory masking, a well-known auditory perception, and modulation enhancement that simulates a strong relationship between modulation spectrums and intelligibility of speech are embedded into the PS-ZCPA method. Finally, a Wiener filter based noise reduction procedure is integrated into the method to make it more noise-robust, and the performance is evaluated against ETSI ES202 (WI008), which is a standard front-end for distributed speech recognition. All -the experiments were carried out on Aurora-2J database. The experimental results demonstrated improved performance of the PS-ZCPA method by embedding auditory masking into it, and a slightly improved performance by using modulation enhancement. The PS-ZCPA method with Wiener filter based noise reduction also showed better performance than ETSI ES202 (WI008).
机译:先前提出了基于ZCPA(零交叉峰振幅)的音高同步(PS)听觉特征提取方法,并且该方法比传统的基于ZCPA和MFCC的特征具有更高的鲁棒性。本文首先将非线性自适应阈值调整程序引入PS-ZCPA方法中,以在不同信噪比(SNR)的嘈杂条件下获得最佳结果。接着,将听觉掩蔽,众所周知的听觉感知和模拟调制频谱与语音清晰度之间的强关系的调制增强嵌入到PS-ZCPA方法中。最后,将基于Wiener滤波器的降噪程序集成到该方法中,以使其具有更高的噪声鲁棒性,并根据ETSI ES202(WI008)(一种用于分布式语音识别的标准前端)评估性能。所有实验均在Aurora-2J数据库上进行。实验结果表明,通过将听觉掩蔽嵌入PS-ZCPA方法,可以提高性能,而通过使用调制增强,可以稍微改善性能。带有基于Wiener滤波器的降噪功能的PS-ZCPA方法也比ETSI ES202(WI008)表现出更好的性能。

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