Progress Toward Adaptive Integration and Optimization of Automated and Neural Processing Systems: Establishing Neural and Behavioral Benchmarks of Optimized Performance
Abstract
Technical advances intended to improve situational awareness by providing more information about the tactical environment place high demands on the Soldier's limited capacity cognitive and neural systems. Information display technologies have been developed that filter information to prevent performance failures due to information overload. However, these technologies are typically rigid with respect to changes in the operator's physical and cognitive state. The objective of the project described in this report is to develop an adaptive framework that adjusts filtering algorithms to optimize human performance in a variety of operational contexts. The work adopts a unique approach that integrates measures of behavior and brain activity with automated information processing and display algorithms. It leverages basic science research conducted at the Institute for Collaborative Biotechnologies that uses machine learning algorithms to detect performance failures during difficult attentional tasks based on brain activity, work done at Science Applications International Corporation using pattern classification algorithms to detect threats based on brain activity, and work done at the US Army Research Laboratory aimed at understanding the cognitive constraints on performance in crew stations.
Document Details
- Document Type
- Technical Report
- Publication Date
- Nov 01, 2014
- Accession Number
- ADA616681
Entities
People
- Anthony J. Ries
- Barry Giesbrecht
- Hubert Cecotii
- Jonathan Touryan
- Kaleb G. McDowell
- Laurie Gibson
Organizations
- United States Army Research Laboratory