基于riesz变换的浊音窄带频谱解调

Haricharan Aragonda, C. Seelamantula
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引用次数: 3

摘要

浊音的窄带频谱图可以建模为二维调制过程的结果。在本文中,我们开发了一种解调算法来估计二维调幅(AM)和载波的给定频谱图补丁。解调算法基于Riesz变换,Riesz变换是一种幺正的平移不变算子,是众所周知的一维Hilbert变换算子的二维扩展。现有的频谱解调方法依赖于通信文献中正弦解调方法的扩展,并且需要精确估计二维载波。另一方面,基于Riesz变换的方法不需要载波估计。在实际语音数据上对所提出的方法和正弦解调方案进行了测试。实验结果表明,与正弦波解调相比,Riesz解调后的调幅和载波能更准确地表示频谱图斑块。结果表明,采用该解调方法后,信号重构误差率提高了2 ~ 6db。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Riesz-transform-based demodulation of narrowband spectrograms of voiced speech
Narrowband spectrograms of voiced speech can be modeled as an outcome of two-dimensional (2-D) modulation process. In this paper, we develop a demodulation algorithm to estimate the 2-D amplitude modulation (AM) and carrier of a given spectrogram patch. The demodulation algorithm is based on the Riesz transform, which is a unitary, shift-invariant operator and is obtained as a 2-D extension of the well known 1-D Hilbert transform operator. Existing methods for spectrogram demodulation rely on extension of sinusoidal demodulation method from the communications literature and require precise estimate of the 2-D carrier. On the other hand, the proposed method based on Riesz transform does not require a carrier estimate. The proposed method and the sinusoidal demodulation scheme are tested on real speech data. Experimental results show that the demodulated AM and carrier from Riesz demodulation represent the spectrogram patch more accurately compared with those obtained using the sinusoidal demodulation. The signal-to-reconstruction error ratio was found to be about 2 to 6 dB higher in case of the proposed demodulation approach.
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