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Estimating Single-Channel Source Separation Masks: Relevance Vector Machine Classifiers vs. Pitch-Based Masking

机译:估计单通道源分离掩膜:相关矢量机分类器与基于音高的掩膜

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摘要

Audio sources frequently concentrate much of their energy into a relatively small proportion of the available time-frequency cells in a short-time Fourier transform (STFT). This sparsity makes it possible to separate sources, to some degree, simply by selecting STFT cells dominated by the desired source, setting all others to zero (or to an estimate of the obscured target value), and inverting the STFT to a waveform. The problem of source separation then becomes identifying the cells containing good target information. We treat this as a classification problem, and train a Relevance Vector Machine (a probabilistic relative of the Support Vector Machine) to perform this task. We compare the performance of this classifier both against SVMs (it has similar accuracy but is not as efficient as RVMs), and against a traditional Computational Auditory Scene Analysis (CASA) technique based on a noise-robust pitch tracker, which the RVM outperforms significantly. Differences between the RVM- and pitch-tracker-based mask estimation suggest benefits to be obtained by combining both.
机译:音频源通常在短时傅立叶变换(STFT)中将其大部分能量集中在相对较小的可用时频单元中。这种稀疏性使得在某种程度上可以通过选择由所需信号源占主导的STFT单元,将所有其他信号都设置为零(或对模糊目标值进行估计)并将STFT转换为波形来在某种程度上分离信号源。然后,源分离的问题变成识别包含良好目标信息的单元。我们将其视为分类问题,并训练关联向量机(支持向量机的概率相对)来执行此任务。我们将该分类器的性能与SVM(具有相似的精度,但不如RVM)以及基于基于噪声健壮的音调跟踪器的传统计算听觉场景分析(CASA)技术进行了比较,该技术在RVM上的表现明显优于其他。基于RVM和基于音高跟踪器的蒙版估计之间的差异表明,通过将两者结合起来可以获得好处。

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  • 年度 2006
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  • 正文语种 {"code":"en","name":"English","id":9}
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