基于模型的贝叶斯推理框架的助听器实时音频处理

M. Roa-Villescas, B. Vries, S. Stuijk, H. Corporaal
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引用次数: 3

摘要

助听器(HA)信号处理算法的开发需要两个设计步骤之间的迭代过程,即算法开发和嵌入式实现。算法设计者偏爱高级编程语言有几个原因,包括更高的生产率,代码可读性,也许最重要的是,最先进的信号处理框架的可用性开辟了新的研究方向。另一方面,嵌入式软件最好使用低级编程语言来实现,以允许对硬件进行更精细的控制,这是实时处理应用程序的基本特征。在本文中,我们提出了一种技术,允许在称为openMHA的实时HA处理平台上部署用Julia(一种现代高级编程语言)编写的DSP算法。我们通过使用基于模型的贝叶斯推理框架来执行实时音频处理来演示这种技术。
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Real-time audio processing for hearing aids using a model-based bayesian inference framework
Development of hearing aid (HA) signal processing algorithms entails an iterative process between two design steps, namely algorithm development and the embedded implementation. Algorithm designers favor high-level programming languages for several reasons including higher productivity, code readability and, perhaps most importantly, availability of state-of-the-art signal processing frameworks that open new research directions. Embedded software, on the other hand, is preferably implemented using a low-level programming language to allow finer control of the hardware, an essential trait in real-time processing applications. In this paper we present a technique that allows deploying DSP algorithms written in Julia, a modern high-level programming language, on a real-time HA processing platform known as openMHA. We demonstrate this technique by using a model-based Bayesian inference framework to perform real-time audio processing.
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