Emulating brain-like learning performance has been a key challenge
for research in neural networks and learning systems, including
recognition, memory and perception. In the last few decades, a variety
of approaches for brain-like learning and information processing have
been proposed, including approaches based on sparse representations or
hierarchical/deep architectures. While capable of achieving impressive
performance, these methods still perform poorly compared to biological
systems under a wide variety of conditions. With the availability of
neuromorphic hardware providing a fundamentally different technique for
data representation, neuromorphic systems, using neural spikes to
represent the outputs of sensors and for communication between computing
blocks, and using spike timing based learning algorithms, have shown
appealing computing characteristics. However, current neuromorphic
learning systems cannot yet achieve the performance figures comparable
to what machine learning approaches can offer. Neuromorphic systems are
also compatible with another framework called cyborg intelligence.
Cyborg intelligence aims to deeply integrate machine intelligence with
biological intelligence by connecting machines and living beings via
brain-machine interfaces, enhancing strengths and compensating for
weaknesses by combining the biological cognition capability with the
machine computational capability. In cyborg intelligence, the real-time
interaction and exchange of information between biological and
artificial neural systems is still an important open challenge, and
existing learning approaches would not be able to meet such a challenge.
The goal of the special issue is to consolidate the efforts for
developing a suitable learning framework for neuromorphic systems and
cyborg intelligence and promote research activities in this area.
Scope of the Special Issue
We
invite original contributions related to learning in neuromorphic
systems and cyborg intelligence, from theories, algorithms, modelling
and experiment studies to applications. Topics include but are not
limited to:
- Cognitive computing and cyborg intelligence
- Neuromorphic information/signal processing
- Brain-inspired data representation models
- Neuromorphic learning and cognitive systems
- Co-learning in bio-machine systems
- Spike-based sensing and learning
- Neuromorphic sensors and hardware systems
- Intelligence for embedded systems
- Cognition mechanisms for big data
- Embodied cognition and neuro-robotics.
Important Dates
15 Nov 2014 – Deadline for manuscript submission
15 Feb 2015 – Notification of authors
15 Apr 2015– Deadline for submission of revised manuscripts
15 May 2015 – Final decision
Guest Editors
Zhaohui Wu, Zhejiang University, China (
wzh@zju.edu.cn)
Ryad Benosman, University of Pierre and Marie Curie, France (
ryad.benosman@upmc.fr)
Huajin Tang, Institute for Infocomm Research, Singapore and Sichuan University (
huajin.tang@ieee.org)
Shih-Chii Liu, Institute of Neuroinformatics, University of Zurich and ETH Zurich (
shih@ini.phys.ethz.ch)
Submission Instructions
- Read the information for Authors at http://cis.ieee.org/tnnls
- Submit the manuscript by 15th Nov 2014 at the TNNLS webpage (http://mc.manuscriptcentral.com/tnnls)
and follow the submission procedure. Please, clearly indicate on the
first page of the manuscript and in the cover letter that the manuscript
has been submitted to the special issue on Learning in Neuromorphic
Systems and Cyborg Intelligence. Send also an email to the guest editors
with subject “TNNLS special issue submission” to notify about your
submission.
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