强加性噪声下稀疏连接网络的滤波

A. Berrones
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引用次数: 1

摘要

提出了一种新的基函数叠加信号降噪方法。该方法基于将信号模型的组成部分解释为重叠(标量积)稀疏连接网络中的节点。数据样本中的每个点表示一个重叠。这种网络,其中的节点通过向量传递信息,定义了一个知识网络,这是统计物理领域最近引入的一个概念。将以往关于知识网络统计特性的研究成果推广到降噪领域,表明提取重要的隐藏量是可能的。特别地,构建并测试了一种能够给出信号模型中未知自由度数估计的算法
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Filtering by Sparsely Connected Networks Under the Presence of Strong Additive Noise
A new approach to the problem of noise reduction in signals composed by superpositions of basis functions is proposed. The method is based on interpreting the components of signal models as nodes in a sparsely connected network of overlaps (scalar products). Every point in the data sample expresses an overlap. Networks of this kind, in which nodes carry information by means of vectors, define a knowledge network, a recently introduced concept in the field of statistical physics. Previous results on the statistical properties of knowledge networks are generalized to noise reduction and its shown that is possible to extract important hidden quantities. In particular, an algorithm capable to give estimates of the unknown number of degrees of freedom in signal models is constructed and tested
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