Cognitive Technology Threat Warning System

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The Cognitive Technology Threat Warning System, otherwise known as (CT2WS), is a brain-computer interface designed to analyze sensory data and then alert foot-soldiers to any possible threats, passive or direct. [1] CT2WS is part of U.S. Department of Defense's effort to produce an efficient and working Network-centric infantryman.

Contents

Project

Proposal

Proposed in early 2007, DARPA came to believe that a visual warning system could be produced and developed via an integration of technology and artificial intelligence. [1] By combining discoveries in flat-field, wide-angle optics, large pixel-count digital imagers, ultra-low power analog-digital hybrid signal processing electronics with cognitive visual processing algorithms, and neural network-based target detection signatures, DARPA felt a breakthrough was possible, but not likely to be achieved by independent researchers. [1] CT2WS further requires that human brain activity must be integrated with the technology.

Selection of research partners is currently open to potential researchers, including: non-traditional defense contractors, nonprofit organizations, educational institutions, small businesses, etc.

It was anticipated that funding for CT2WS will continue until 2011. [2]

Funding

Budget for the project will be determined based upon the scope of the independent proposals. [2] There have been many research and technology contributors to the project including HRL and Advanced Brain Monitoring which contributed the B-Alert wireless-EEG headsets.

Technical details

Criteria for project includes: soldier portable, sensory-data collect for a 120 degree field of view (FOV), artificial analysis of data, threat analysis and prioritizing "brain-in-the-loop" integration, and real-time processing of neural and artificial cognitive data. [2]

The DARPA Grand Challenge is another project designed to attract independent researchers to study AI for application to network-centric warfare. The Grand Challenge has tested autonomous driving ability in both urban and rough terrain settings.

See also

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References

  1. 1 2 3 Kirkpatrick, Douglas (2007-06-27). "BROAD AGENCY ANNOUNCEMENT (BAA) 07-25, Cognitive Technology Threat Warning Systems (CT2WS)". DARPA. Archived from the original (web) on 2008-02-04. Retrieved 2008-02-25.
  2. 1 2 3 Rigdon, Grace (2007-04-08). "CT2WS FAQ" (PDF). SAINC. Archived from the original (PDF) on 2017-05-17. Retrieved 2008-02-25.