Advances in Modern Blind Signal Separation Algorithms: Theory and Applications

Kostas Kokkinakis, P. Loizou
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引用次数: 11

Abstract

With human-computer interactions and hands-free communications becoming overwhelmingly important in the new millennium, recent research efforts have been increasingly focusing on state-of-the-art multi-microphone signal processing solutions to improve speech intelligibility in adverse environments. One such prominent statistical signal processing technique is blind signal separation (BSS). BSS was first introduced in the early 1990s and quickly emerged as an area of intense research activity showing huge potential in numerous applications. BSS comprises the task of 'blindly' recovering a set of unknown signals, the so-called sources from their observed mixtures, based on very little to almost no prior knowledge about the source characteristics or the mixing structure. The goal of BSS is to process multi-sensory observations of an inaccessible set of signals in a manner that reveals their individual (and original) form, by exploiting the spatial and temporal diversity, readily accessible through a multi-microphone configuration. Proceeding blindly exhibits a number of advantages, since assumptions about the room configuration and the source-to-sensor geometry can be relaxed without affecting overall efficiency. This booklet investigates one of the most commercially attractive applications of BSS, which is the simultaneous recovery of signals inside a reverberant (naturally echoing) environment, using two (or more) microphones. In this paradigm, each microphone captures not only the direct contributions from each source, but also several reflected copies of the original signals at different propagation delays. These recordings are referred to as the convolutive mixtures of the original sources. The goal of this booklet in the lecture series is to provide insight on recent advances in algorithms, which are ideally suited for blind signal separation of convolutive speech mixtures. More importantly, specific emphasis is given in practical applications of the developed BSS algorithms associated with real-life scenarios. The developed algorithms are put in the context of modern DSP devices, such as hearing aids and cochlear implants, where design requirements dictate low power consumption and call for portability and compact size. Along these lines, this booklet focuses on modern BSS algorithms which address (1) the limited amount of processing power and (2) the small number of microphones available to the end-user. Table of Contents: Fundamentals of blind signal separation / Modern blind signal separation algorithms / Application of blind signal processing strategies to noise reduction for the hearing-impaired / Conclusions and future challenges / Bibliography
现代盲信号分离算法的研究进展:理论与应用
随着人机交互和免提通信在新千年中变得极其重要,最近的研究工作越来越多地集中在最先进的多麦克风信号处理解决方案上,以提高恶劣环境下的语音清晰度。盲信号分离(BSS)是一种重要的统计信号处理技术。BSS于20世纪90年代初首次引入,并迅速成为一个研究活动激烈的领域,在众多应用中显示出巨大的潜力。BSS包括“盲目”恢复一组未知信号的任务,即基于很少或几乎没有关于源特性或混合结构的先验知识,从观察到的混合物中恢复所谓的源。BSS的目标是通过利用空间和时间的多样性,通过多麦克风配置轻松访问,以揭示其个体(和原始)形式的方式处理一组不可访问的信号的多感官观察。盲目进行有很多优点,因为可以在不影响整体效率的情况下放松对房间配置和源到传感器几何形状的假设。这本小册子调查了BSS最具商业吸引力的应用之一,它是在混响(自然回声)环境中同时恢复信号,使用两个(或更多)麦克风。在这种范例中,每个麦克风不仅捕获来自每个源的直接贡献,而且还捕获原始信号在不同传播延迟下的几个反射副本。这些录音被称为原始声源的卷积混合。本系列讲座中的小册子的目的是提供对算法的最新进展的见解,这些算法非常适合于卷积语音混合的盲信号分离。更重要的是,本文特别强调了所开发的BSS算法与现实生活场景的实际应用。开发的算法被放在现代DSP设备的背景下,如助听器和人工耳蜗,其设计要求要求低功耗,要求便携性和紧凑的尺寸。沿着这些路线,这本小册子重点介绍了现代BSS算法,它解决了(1)有限的处理能力和(2)最终用户可用的麦克风数量少的问题。目录:盲信号分离基础/现代盲信号分离算法/盲信号处理策略在听障降噪中的应用/结论与未来挑战/参考书目
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