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IJNCR - Signal Processing 2014 : Special Issue on Natural Computing and Signal Processing - International Journal of Natural Computing Research (IJNCR)

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Link: http://www.dca.fee.unicamp.br/~attux/cfp_sig_pro_IJNCR
 
When N/A
Where N/A
Submission Deadline Jun 30, 2014
Notification Due Aug 15, 2014
Final Version Due Nov 30, 2014
Categories    signal processing   computational intelligence   machine learning
 

Call For Papers

CALL FOR PAPERS

International Journal of Natural Computing Research (IJNCR)

Special Issue on Natural Computing and Signal Processing

The ever-increasing need for making sense of large amounts of data and extracting information associated with complex underlying models has, in the last three decades, led to significant changes in the repertoire of tools employed to handle classical signal processing tasks. It can be safely stated that natural computing has played a crucial role in this process. This assertion can be justified from three distinct (albeit interrelated) perspectives, those of 1) nonlinear filtering structures (e.g. neural networks); 2) efficient clustering and optimization techniques (e.g. evolutionary and immune-inspired approaches, particle swarm optimization) and 3) new implementation paradigms (e.g. DNA and quantum computing).

In spite of the growing importance of these formulations, there is a demand for efforts that contribute to their consolidation as a mature branch of modern signal processing theory and for investigations concerning their applicability to a wide range of real-world problems. Having these facts in view, this special issue aims to bring together works covering theoretical and/or practical aspects of signal processing methods based on natural computing paradigms such as:

• Neural networks
• Reservoir computing
• Evolutionary computation
• Particle swarm optimization
• Ant colony optimization
• Artificial immune systems
• DNA and quantum computing
• Bio-inspired clustering

This special issue is also devoted to disseminating and, hopefully, extending the repertoire of relevant signal processing tasks that may be advantageously addressed with the aid of natural computing techniques, which encompasses, but is not limited to, those of filtering, time series prediction, deconvolution, channel equalization, seismic processing, image processing, source separation and array signal processing.

Prospective authors should note that only original and previously unpublished contributions, review papers and tutorials will be considered. Interested authors must consult the journal guidelines for manuscript submission at http://www.igi-global.com/Files/AuthorEditor/guidelinessubmission.pdf prior to submission. All article submissions will be forwarded to at least 3 reviewers for double-blind, peer review. Final decision regarding acceptance/revision/rejection will be based on the reviews received from the reviewers. All submissions and inquiries must be forwarded electronically to the attention of:

Special Issue Guest Editors
International Journal of Natural Computing Research
Email: ijncr_sig_pro@fee.unicamp.br

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