Ownby et al., 2006 - Google Patents

Reading the mind of the enemy: predictive analysis and command effectiveness

Ownby et al., 2006

View PDF
Document ID
8821701901085927640
Author
Ownby M
Kott A
Publication year

External Links

Snippet

The Defense Advanced Research Projects Agency DARPA Real-time Adversarial Intelligence and Decision-making RAID program is investigating the feasibility of reading the mind of the enemy to estimate and anticipate, in real-time, the enemys likely goals …
Continue reading at apps.dtic.mil (PDF) (other versions)

Classifications

    • FMECHANICAL ENGINEERING; LIGHTING; HEATING; WEAPONS; BLASTING ENGINES OR PUMPS
    • F41WEAPONS
    • F41GWEAPON SIGHTS; AIMING
    • F41G3/00Aiming means; Laying means
    • F41G3/26Teaching or practice apparatus for gun-aiming or gun-laying
    • F41G3/2616Teaching or practice apparatus for gun-aiming or gun-laying using a light emitting device

Similar Documents

Publication Publication Date Title
Rashid et al. Artificial intelligence in the military: An overview of the capabilities, applications, and challenges
Goecks et al. On games and simulators as a platform for development of artificial intelligence for command and control
Yun et al. Agent-based simulation of time to decide: Military commands and time delays
Narayanan et al. First-year report of ARL directors strategic initiative (FY20-23): artificial intelligence (AI) for command and control (C2) of multi-domain operations (MDO)
Pleban et al. Training and assessment of decision-making skills in virtual environments
Ownby et al. Reading the mind of the enemy: predictive analysis and command effectiveness
Potter et al. Case studies: Applied cognitive work analysis in the design of innovative decision support
Baker et al. AI and ML in the multi-domain operations era: vision and pitfalls
Kott et al. Tools for real-time anticipation of enemy actions in tactical ground operations
Stanners et al. An empirical study of the relationship between situation awareness and decision making
Woodaman Agent-based simulation of military operations other than war small unit combat
Ownby et al. Predicting Enemy's Actions Improves Commander Decision-Making
Lin-Greenberg The Remote Revolution: Drones and Modern Statecraft
Middleton Simulating small unit military operations with agent-based models of complex adaptive systems
Kott et al. Approaches to validation of information fusion systems
Campshure Devices and Aids for Training M1 Tank Gunnery in the Army National Guard: A Detailed Analysis of Training Requirements.
Stilman et al. Adversarial reasoning and resource allocation: the LG approach
Falcone Machine learning systems in nuclear command, control, and communications architecture: Opportunities, limitations, and recommendations for strategic commanders
Al-Karaeen Characterizing battlefield human decision making with value focused thinking and reliability modeling
Ilie INTELLIGENCE DRIVEN OPERATIONS, THE KEY TO OPERATIONAL SUCCESS
Alexandru INTELLIGENCE DRIVEN OPERATIONS, THE KEY TO OPERATIONAL SUCCESS
Wiederhold Physiological monitoring during simulation training and testing
Baker Autonomous Systems Matrix Wargame Final Report
Dyer The measurement of individual and unit expertise
Ozkan et al. Three simulation models of naval air defense