函数分析在信号处理中的应用的简明教程

Decis. Sci. Pub Date : 2022-10-21 DOI:10.3390/sci4040040
Najah F. Ghalyan, A. Ray, W. Jenkins
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引用次数: 0

摘要

泛函分析是数学学科中发展较好的一个领域,它为解决应用科学和工程中的许多问题提供了统一的框架。特别是,信号处理中的几个重要课题(如频谱估计、线性预测和小波分析)已经通过工程师和数学家的共同努力得到了启动和发展,他们利用希尔伯特空间、哈迪空间、弱拓扑和其他泛函分析主题的结果,为信号处理中的许多子领域建立了基本的分析结构。本文提供了一个简明的教程,用于理解功能分析中基本元素的理论概念,这些元素构成了信号处理中心主题的数学框架和主干,特别是统计和自适应信号处理。应用这些概念来表述和分析信号处理问题,对于应用科学和工程领域的研究人员来说往往是困难的,因为他们不太熟悉功能分析的术语和概念。此外,在信号处理文献中,这些概念往往没有得到足够详细的解释;另一方面,它们在功能分析的教科书中得到了很好的研究,但没有强调信号处理应用的观点。因此,吸收功能分析的相关信息并解释它们与信号处理应用的相关性的过程对于应用科学和工程的专业团体来说应该具有重要意义和实用性。本文提供的信息旨在为信号处理中明显不同的主题提供充分的数学背景和统一的概念。综上所述,本文的主要目的如下:(1)从不同来源的泛函分析文献中获取与发展信号处理理论和应用相关的重要信息。(2)以非功能分析专家(例如,在信号处理和数学方面接受过本科或研究生一年级培训的人)易于理解的方式描述基本概念。(3)基于信号处理的功能分析概念的解释及其在教程格式中的简明呈现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Concise Tutorial on Functional Analysis for Applications to Signal Processing
Functional analysis is a well-developed field in the discipline of Mathematics, which provides unifying frameworks for solving many problems in applied sciences and engineering. In particular, several important topics (e.g., spectrum estimation, linear prediction, and wavelet analysis) in signal processing had been initiated and developed through collaborative efforts of engineers and mathematicians who used results from Hilbert spaces, Hardy spaces, weak topology, and other topics of functional analysis to establish essential analytical structures for many subfields in signal processing. This paper presents a concise tutorial for understanding the theoretical concepts of the essential elements in functional analysis, which form a mathematical framework and backbone for central topics in signal processing, specifically statistical and adaptive signal processing. The applications of these concepts for formulating and analyzing signal processing problems may often be difficult for researchers in applied sciences and engineering, who are not adequately familiar with the terminology and concepts of functional analysis. Moreover, these concepts are not often explained in sufficient details in the signal processing literature; on the other hand, they are well-studied in textbooks on functional analysis, yet without emphasizing the perspectives of signal processing applications. Therefore, the process of assimilating the ensemble of pertinent information on functional analysis and explaining their relevance to signal processing applications should have significant importance and utility to the professional communities of applied sciences and engineering. The information, presented in this paper, is intended to provide an adequate mathematical background with a unifying concept for apparently diverse topics in signal processing. The main objectives of this paper from the above perspectives are summarized below: (1) Assimilation of the essential information from different sources of functional analysis literature, which are relevant to developing the theory and applications of signal processing. (2) Description of the underlying concepts in a way that is accessible to non-specialists in functional analysis (e.g., those with bachelor-level or first-year graduate-level training in signal processing and mathematics). (3) Signal-processing-based interpretation of functional-analytic concepts and their concise presentation in a tutorial format.
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