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Audio signal enhancement using a block-sequential Gabor regression scheme

机译:使用块顺序Gabor回归方案增强音频信号

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Summary form only given. Bayesian hierarchical models provide a natural and effective means of exploiting prior knowledge concerning the time-frequency structure of natural sound signals - something that has often been overlooked in traditional approaches to audio signal processing. Having constructed a Bayesian model and prior distributions capable of taking into account the time-frequency characteristics of typical audio waveforms, we focus here on the development of particle filtering algorithms for sequential block-based processing with low latency. We present results for the enhancement of degraded speech and music signals, and compare these with those of a Gabor regression scheme using Markov chain Monte Carlo methods.
机译:仅提供摘要表格。贝叶斯分层模型提供了一种自然而有效的手段,可以利用有关自然声音信号时频结构的先验知识,而这在传统的音频信号处理方法中经常被忽略。在构建了能够考虑典型音频波形的时频特性的贝叶斯模型和先验分布之后,我们在这里集中精力研究粒子滤波算法的开发,以实现低延迟的基于顺序块的处理。我们提出了增强退化语音和音乐信号的结果,并将这些结果与使用马尔可夫链蒙特卡洛方法的Gabor回归方案进行了比较。

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