Graph-based bayesian approach for transient interference suppression

R. Talmon, I. Cohen, S. Gannot, R. Coifman
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引用次数: 1

Abstract

In this paper, we present a method for transient interference suppression. The main idea is to learn the intrinsic geometric structure of the transients instead of relying on estimates of noise statistics. The transient interference structure is captured via a parametrization of a graph constructed from the measurements. This parametrization is viewed as an empirical model for transients and is used for building a filter that extracts transients from noisy speech. We present a model-based supervised algorithm, in which the graph-based empirical model is constructed in advance from training recordings, and then extended to new incoming measurements. This paper extends previous studies and presents a new Bayesian approach for empirical model extension that takes into account both the structure of the transients as well as the dynamics of speech signals.
基于图的瞬态干扰抑制贝叶斯方法
本文提出了一种抑制瞬态干扰的方法。其主要思想是学习瞬态的内在几何结构,而不是依赖于噪声统计量的估计。瞬态干涉结构通过由测量构造的图的参数化来捕获。该参数化被视为瞬态的经验模型,并用于构建从噪声语音中提取瞬态的滤波器。我们提出了一种基于模型的监督算法,该算法利用训练记录预先构建基于图的经验模型,然后将其扩展到新的输入测量。本文扩展了以往的研究,提出了一种新的贝叶斯方法来扩展经验模型,该方法既考虑了瞬态结构,也考虑了语音信号的动态。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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