An algorithm of the sequence of artificial symmetric signals for comparing and creating a new convolution method

A. Kerimov
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Abstract

The objective of this article is to create an algorithm of the sequence of artificial signals that can be used to compare and create methods for processing one- and two-dimensional signals. It will then be implemented to compare feature extraction methods that rely on discrete wavelet transforms. The discrete wavelet transform is superior to other signal processing techniques in several ways. Developing a feature set is a crucial step in using the discrete wavelet transform. Mean value and standard deviation are suggested as feature extraction techniques in this study. The mean value is the only option selected for the first feature extraction method; the mean value and standard deviation are selected for the second feature extraction method. To build any number of artificial signal sequences from a single, several conditions are taken into account, for example, their symmetry, they are supposed to be located at the same distance from each other, that is, with an equal step. Symmetrical signal sequences constructed in this way differ from common wellknown signal sequences, such as Fourier series, in that they converge to a given signal in equal steps.
用于比较和创建新卷积法的人工对称信号序列算法
本文的目的是创建一种人工信号序列算法,用于比较和创建处理一维和二维信号的方法。然后,它将用于比较依赖离散小波变换的特征提取方法。离散小波变换在多个方面优于其他信号处理技术。开发特征集是使用离散小波变换的关键步骤。本研究建议将平均值和标准偏差作为特征提取技术。第一种特征提取方法只选择平均值;第二种特征提取方法选择平均值和标准偏差。要从单一信号序列建立任意数量的人工信号序列,需要考虑几个条件,例如它们的对称性,即它们之间的距离应该相同,也就是步长相等。用这种方法构建的对称信号序列与常见的已知信号序列(如傅里叶级数)不同,它们以相等的步长收敛到给定信号。
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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