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Title: Effect of Finite Register Length on Bacterial Foraging Optimization based ICA and Constrained Genetic Algorithm based ICA Algorithm
Authors: Acharya, D P
Panda, G
Lakshmi, Y V S
Keywords: blind source separation
error statistics
fixed point arithmetic
genetic algorithms
independent component analysis
Issue Date: 2008
Publisher: IEEE
Citation: International Conference on Signal Processing, Communications and Networking, 2008. ICSCN '08.4-6 Jan. 2008 Chennai, P 244 - 249
Abstract: Independent Component Analysis (ICA) technique separates mixed signals blindly without any information of the mixing system. bacterial foraging optimization based ICA (BFOICA) and constrained genetic algorithm based ICA (CGAICA) are two recently developed derivative free evolutionary computational ICA techniques. In BFOICA the foraging behavior of E.coli bacteria present in our intestine is mimicked for evaluation of independent components (IC) where as in CGAICA Genetic Algorithm is used for IC estimation in a constrained manner. The present work evaluates the error performance of BFOICA and CGAICA algorithm for its fixed-point implementation. Simulation study is carried on both fixed and floating point ICA algorithms. It is observed that the word length greatly influences the separation performance. A comparison of fixed-point error performance of both the algorithms is also carried out in this work.
Description: Copyright for the paper belongs to IEEE
Appears in Collections:Conference Papers

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