Knowledge-based approach to signal smoothing

A. Abdulrahim, T. Dobrowiecki
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Abstract

The analytic approach to signal processing performs well if there is adequate understanding of the characteristics of the signal source. In more complicated cases, syntactic signal processing tools used to be a working alternative; however, these share the common algorithmic background with the numerical methods. On the other hand, the filed area of order statistics (OS) introduced into signal processing a number of tools that handle phenomena that the usual analytic theory could not even model. To grasp the essence of the filtering operation requires a kind of symbolical description, ambiguous and full of dependencies, creating a gap between the filed and other customary areas of signal processing. Thus, proper choice of an OS filter for a given application must be based on a mixed numerical versus symbolical evaluation of the signal features and goals, which is clearly outside the scope of normal signal-processing expertise. A possible solution to this problem is to interface the OS tool library to the user via an advisory layer capable of the integrated maintenance of the quantitative and symbolic information, supporting the user in the modelling, decision and evaluation phases of problem-solving. The study presented in this paper addresses the concrete case of OS signal smoothing, evaluating the components of the problem and presenting the structure of the intelligent front-end system. >
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基于知识的信号平滑方法
如果对信号源的特性有充分的了解,信号处理的分析方法就能很好地发挥作用。在更复杂的情况下,语法信号处理工具过去是一种可行的选择;然而,这些方法与数值方法有共同的算法背景。另一方面,序统计(OS)的领域引入了许多工具到信号处理中,这些工具处理通常的分析理论甚至无法建模的现象。要把握滤波运算的本质,需要一种符号化的描述,歧义和充满依赖性,造成了该领域与其他信号处理习惯领域之间的差距。因此,为给定应用程序正确选择OS滤波器必须基于对信号特征和目标的混合数值与符号评估,这显然超出了正常信号处理专业知识的范围。这个问题的一个可能的解决方案是通过一个能够综合维护定量和符号信息的咨询层将操作系统工具库与用户连接起来,在解决问题的建模、决策和评估阶段为用户提供支持。本文研究了操作系统信号平滑的具体情况,评估了问题的组成部分,并给出了智能前端系统的结构。>
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