自适应小波子带编码的音乐压缩

K. Ferens, W. Kinsner
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引用次数: 4

摘要

本文描述了宽带音频信号的小波子带系数域的建模,以实现低比特率和高质量的压缩。目的是在小波域建立宽带音频信号的感知模型。通过将特定子带的量化步长设置为与子带能量成反比的大小,然后在子带内将能量确定的步长修改为与系数的幅度概率密度成反比,使用适应子带信号的方案对小波子带中的系数进行量化。采用基于频率敏感竞争学习的矢量/标量量化方法对各子带系数的幅度概率密度进行建模。源数据由1通道,16位线性数据以44.1 kHz采样从包含主要古典和流行音乐的CD。初步结果显示,比特率为150 kbps,而不是705.6 kbps,并且没有感知质量损失。与傅立叶变换等其他标准变换相比,小波变换在表示多重分形信号(如宽带音频)方面提供了更好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive wavelet subband coding for music compression
This paper describes modelling of the coefficient domain in wavelet subbands of wideband audio signals for low-bit rate and high-quality compression. The purpose is to develop models of the perception of wideband audio signals in the wavelet domain. The coefficients in the wavelet subbands are quantized using a scheme that adapts to the subband signal by setting the quantization step size for a particular subband to a size that is inversely proportional to the subband energy, and then, within a subband, by modifying the energy determined step size as inversely proportional to the amplitude probability density of the coefficient. The amplitude probability density of the coefficients in each subband is modelled using learned vector/scalar quantization employing frequency sensitive competitive learning. The source data consists of 1-channel, 16-bit linear data sampled at 44.1 kHz from a CD containing major classical and pop music. Preliminary results show a bit-rate of 150 kbps, rather than 705.6 kbps, with no perceptual loss in quality. The wavelet transform provides better results for representing multifractal signals, such as wide band audio, than do other standard transforms, such as the Fourier transform.
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