信号分析中的Ramanujan和-小波变换

Guangyi Chen, S. Krishnan, W. Xie
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引用次数: 7

摘要

小波变换在许多实际应用中是一个非常有用的工具。这是由于其信号的多分辨率表示及其局域时频特性。拉马努金和(RS)是近年来引入信号处理的一种方法。RS在本质上是正交的,因此提供了良好的节能效果。RS在整数上操作,因此可以得到一个减少量化误差的实现。在本文中,我们将小波变换与RS变换相结合,以创建一种新的信号表示。我们正在努力把这两种转变的优点结合起来,同时克服它们的缺点。我们提出的变换比小波变换包含更丰富的特征,因此它可以用于时频分析、模式识别和图像分析等应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ramanujan sums-wavelet transform for signal analysis
The wavelet transform is a very useful tool for a number of real-life applications. This is due to its multiresolution representation of signals and its localized time-frequency property. The Ramanujan sums (RS) were introduced to signal processing recently. The RS are orthogonal in nature and therefore offer excellent energy conservation. The RS operate on integers and hence can obtain a reduced quantization error implementation. In this paper, we combine the wavelet transform with the RS transform in order to create a new representation of signals. We are trying to combine the merits of the both transforms and at the same time overcome their shortcomings. Our proposed transform contains much richer features than the wavelet transform, so it could be useful for such applications as time-frequency analysis, pattern recognition and image analysis.
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