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首页> 外文期刊>Audio, Speech, and Language Processing, IEEE/ACM Transactions on >Inversion of Auditory Spectrograms, Traditional Spectrograms, and Other Envelope Representations
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Inversion of Auditory Spectrograms, Traditional Spectrograms, and Other Envelope Representations

机译:听觉频谱图,传统频谱图和其他信封表示形式的反演

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摘要

Envelope representations such as the auditory or traditional spectrogram can be defined by the set of envelopes from the outputs of a filterbank. Common envelope extraction methods discard information regarding the fast fluctuations, or phase, of the signal. Thus, it is difficult to invert, or reconstruct a time-domain signal from, an arbitrary envelope representation. To address this problem, a general optimization approach in the time domain is proposed here, which iteratively minimizes the distance between a target envelope representation and that of a reconstructed time-domain signal. Two implementations of this framework are presented for auditory spectrograms, where the filterbank is based on the behavior of the basilar membrane and envelope extraction is modeled on the response of inner hair cells. One implementation is direct while the other is a two-stage approach that is computationally simpler. While both can accurately invert an auditory spectrogram, the two-stage approach performs better on time-domain metrics. The same framework is applied to traditional spectrograms based on the magnitude of the short-time Fourier transform. Inspired by human perception of loudness, a modification to the framework is proposed, which leads to a more accurate inversion of traditional spectrograms.
机译:诸如听觉或传统声谱图之类的信封表示形式可以通过滤波器组输出中的一组信封来定义。常见的包络提取方法会丢弃有关信号快速波动或相位的信息。因此,难以从任意包络表示中反转或重构时域信号。为了解决这个问题,这里提出了时域中的一般优化方法,该方法迭代地最小化了目标包络表示与重构的时域信号之间的距离。针对听觉频谱图,提出了该框架的两种实现方式,其中,滤波器组基于基底膜的行为,而包膜提取则根据内部毛细胞的响应进行建模。一种实现是直接的,而另一种则是两阶段的方法,在计算上更简单。虽然两者都可以准确地反转听觉频谱图,但两阶段方法在时域指标上表现更好。基于短时傅立叶变换的幅度,将相同的框架应用于传统频谱图。受人类对响度感知的启发,对框架进行了修改,从而可以更准确地反转传统声谱图。

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