Fourier Transform of Untransformable Signals Using Pattern Recognition Technique

Varun Gupta, Gavendra Singh, Manish Mittal, S. K. Pahuja
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引用次数: 10

Abstract

In this paper we are highlighting the signals that are not Fourier transformable and give its Fourier transform using PCA (Principle Component Analysis), lDA (linear Discriminant Analysis). Such signals are step signal, signum, etc. Basically Fourier transform transforms time domain signal into frequency domain and after transformation describes what frequencies original signal have. Principle Component Analysis is a way of identifying patterns (recognition) in the data and the differences of the data is highlighted. With the help of PCA & lDA we do the dimension reduction of the signal. lDA is used in statistics and machine learning to find a linear combination of features which characterize or separate two or more classes of objects or events. The resulting combination may be used as a linear classifier or, more commonly, for dimensionality reduction before later classification. lDA is closely related to anova (analysis of variance). PCA is used for analyzing. Main advantage of PCA is that once patterns are found and data is compressed that is by reducing the number of dimension without much loss of information. Dimension reduction is the process of reducing the number of random variables under consideration, and can be divided into feature selection and feature extraction. Feature selection approaches try to find a subset of the original variables and feature extraction transforms the data in the high-dimensional space to a space of fewer dimensions.
基于模式识别技术的不可变换信号傅里叶变换
在本文中,我们强调了不可傅里叶变换的信号,并使用PCA(主成分分析)和lDA(线性判别分析)给出了其傅里叶变换。这类信号有阶跃信号、符号信号等。基本上傅里叶变换将时域信号转换为频域变换后描述了原始信号的频率。主成分分析是一种在数据中识别模式(识别)并突出数据差异的方法。利用PCA和lDA对信号进行降维处理。lDA在统计学和机器学习中用于找到特征的线性组合,这些特征可以描述或分离两个或多个对象或事件类别。由此产生的组合可以用作线性分类器,或者更常见的是,在以后的分类之前用于降维。lDA与方差分析(anova)密切相关。采用主成分分析法进行分析。PCA的主要优点是,一旦找到模式并压缩数据,就可以在不丢失太多信息的情况下减少维数。降维是减少所考虑的随机变量数量的过程,可以分为特征选择和特征提取。特征选择方法试图找到原始变量的子集,特征提取将高维空间中的数据转换为低维空间。
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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