作者
Daniel G Silva, Everton Z Nadalin, Guilherme P Coelho, Leonardo T Duarte, Ricardo Suyama, Romis Attux, Fernando J Von Zuben, Jugurta Montalvao
发表日期
2014/3/1
期刊
Signal Processing
卷号
96
页码范围
153-163
出版商
Elsevier
简介
In this work, we present a novel bioinspired framework for performing ICA over finite (Galois) fields of prime order P. The proposal is based on a state-of-the-art immune-inspired algorithm, the cob-aiNet[C], which is employed to solve a combinatorial optimization problem — associated with a minimal entropy configuration — adopting a Michigan-like population structure. The simulation results reveal that the strategy is capable of reaching a performance similar to that of standard methods for lower-dimensional instances with the advantage of also handling scenarios with an elevated number of sources.
引用总数
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