语音压缩的复小波调制子带

J. Luneau, J. Lebrun, S. H. Jensen
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引用次数: 4

摘要

低频调制的声音携带着语音和音乐的基本信息。它们必须保存以便压缩。复调制频谱通常是在时间/频率分析的基础上,对子带的单一时间包络进行频谱分析得到的。语音或音乐的振幅和音调往往随时间缓慢变化,因此时间包络主要是多项式类型。在这个领域的处理通常会产生不希望的失真,因为只考虑幅度而忽略了相位数据。我们使用复小波变换作为更合适的包络和相位处理工具来解决这个问题。复小波具有明显的幅值和相位,具有很大的稀疏性,并能很好地保持多项式。此外,用复小波作为正交滤波器组实现解析类希尔伯特变换是可能的。通过在这个被称为“调制子带”的替代变换域中工作,由于有趣的稀疏性,该变换显示出非常有前途的压缩能力,并为慢频率和相位变化音频信号的联合光谱-时间分析处理提供了新的方法。
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Complex Wavelet Modulation Subbands for Speech Compression
Low-frequency modulation of sound carry essential information for speech and music. They must be preserved for compression. The complex modulation spectrum is commonly obtained by spectral analysis of the sole temporal envelopes of the subbands out of a time/frequency analysis. Amplitudes and tones of speech or music tend to vary slowly over time thus the temporal envelopes are mostly of polynomial type. Processing in this domain usually creates undesirable distortions because only the magnitudes are taken into account and the phase data is often neglected. We remedy this problem with the use of a complex wavelet transform as a more appropriate envelope and phase processing tool. Complex wavelets carry both magnitude and phase explicitly with great sparsity and preserve well polynomials. Moreover an analytic Hilbert-like transform is possible with complex wavelets implemented as an orthogonal filter bank. By working in this alternative transform domain coined as ``Modulation Subbands", this transform shows very promising compression capabilities thanks to interesting sparsity properties and suggests new approaches for joint spectro-temporal analytic processing of slow frequency and phase varying audio signals.
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