URL: http://www.hindawi.com/journals/cmmm/si/312180/cfp/
Machine Learning for Feature Extraction and Classification in EEG-Based
Brain-Computer Interfaces Call for Papers

Over the years, especially during the last decade, the research of
brain-computer interface (BCI) technology has attracted increasing
interdisciplinary interest from diverse fields such as neuroscience,
biomedical engineering, and machine learning. A BCI provides a platform
through which a biological brain and a computer can communicate with each
other. It can serve as a communication and control channel for people with
severe motor disabilities. There are many other potential applications,
such as alarming paroxysmal episodes for patients with neuropathic
disorders (e.g., predicting epileptic seizures), manipulating delicate
equipment in dangerous or inconvenient environments, augmenting human
cognitive and behavioral performance, as a new approach for entertainment
(e.g., brain-controlled game machines), or for biometric authentication
systems.

Electroencephalogram (EEG) signals are measurements of the electrical
activity of the populations of neurons in the brain cortex, using
electrodes mounted on the scalp. Currently EEG is the most popular way to
measure brain activity in current BCI research due to its low cost and
relative portability. A BCI adopting EEG signals as the information carrier
is usually referred to as an EEG-based BCI. A general EEG-based BCI
consists of four basic components, which are EEG-signal acquisition, feature
extraction, pattern classification, and device control. EEG signals are
characterized by high temporal resolution, relatively poor spatial
resolution, and various types of noise and artifacts. As such, Digital
Signal Processing and Machine Learning techniques have played an important
role in the successful operation of BCIs, especially in the process of
feature extraction and pattern classification—ttwo core components of a BCI.

The main focus of this special issue will be on recent developments in
feature extraction and classification methods for EEG-based BCIs, with the
aim of promoting the latest research in BCIs. New Machine Learning methods
applicable to BCIs or successful combinations of existing Machine
Learningtechniques with BCIs are both highly preferred. Potential
topics include,
but are not limited to:

   - Feature extraction
   - Feature selection
   - Support vector machines
   - Gaussian processes
   - Kernel methods
   - Ensemble learning
   - Sequential learning models
   - Semisupervised learning
   - Active learning
   - Transfer learning

Before submission authors should carefully read over the journal’s Author
Guidelines, which are located at
http://www.hindawi.com/journals/cmmm/guidelines/. Prospective authors
should submit an electronic copy of their complete manuscript through the
journal Manuscript Tracking System at
http://mts.hindawi.com/submit/journals/cmmm/bci/ according to the following
timetable:
  Manuscript Due Friday, 19 July 2013 First Round of Reviews Friday, 11
October 2013 Publication Date Friday, 6 December 2013
Lead Guest Editor

   - Shiliang Sun <[email protected]>, Department of Computer Science
   and Technology, East China Normal University, Shanghai, China

Guest Editors

   - Yijun Wang <[email protected]>, Swartz Center for Computational
   Neuroscience, University of California San Diego, San Diego, CA, USA
   - Tom Diethe <[email protected]>, Machine Learning and Perception Group,
   Microsoft Research Cambridge, Cambridge, UK
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