Artificial Intelligence in the Military Presented by Carson English, Jason Lukis, Nathan Morse and...
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Transcript of Artificial Intelligence in the Military Presented by Carson English, Jason Lukis, Nathan Morse and...
Artificial Intelligence in the Military
Presented by
Carson English, Jason Lukis,
Nathan Morse and Nathan Swanson
Overview
• History
• Neural Networks
• Automated Target Discrimination
• Tomahawk Missile Navigation
• Ethical issues
History
• 1918 – first tests on guided missiles
• 1945 – Germany makes first ballistic missile
• 1950 – AIM-7 Sparrow– “fire-and-forget
History
• 1973 – remotely piloted vehicles (RPVs)– Used to confuse enemy air defenses
• 1983 – tomahawk missile first used by navy– Uses terrain contour matching system
• 1983 – Reagan make his famous star wars speech• 1988 – U.S.S. Vincennes mistakenly destroys
Iranian airbus due to autonomous friend/foe radar system
History
• 1991 – Smart bombs used in Gulf War to selectively destroy enemy targets– Praised for its precision and effectiveness
Neural Networks
• Inspired by studies of the brain
• Massively parallel
• Highly connected
• Many simple units
Structure of a neuron in a neural net
Neural net with three neuron layers
Three Main Neural Net Types
• Perceptron
• Multi-Layer-Perceptron
• Backpropagation Net
Perceptron
Multi-Layer-Perceptron
Backpropagation Net
· pattern association · pattern classification · regularity detection · image processing · speech analysis · optimization problems · robot steering · processing of inaccurate or incomplete inputs · quality assurance · simulation
Areas where neural nets are useful
• the operational problem encountered when attempting to simulate the parallelism of neural networks
• inability to explain any results that they obtain
Limits to Neural Networks
Automated Target Discrimination
• SAR (Synthetic Aperture Radar)
• CFAR (Constant False Alarm Rate)
• QGD (Quadratic Gamma discriminator)
• NL-QGD (multi-layer perceptron)
• Example
• Results
As researched by the Computational NeuroEngineering Laboratory in Gainsville, FL
Synthetic Aperture Radar
• Data collection for ATD
• Self-illuminating imaging radar
• Creates a height map of a surface
• Maintains spatial resolution regardless of distance from target
• Can be used day and night regardless of cloud cover
Picture of SAR rendering
Two Constant False Alarm method for determining targets
Quadratic Gamma discrimination
Non Linear QGD
Example
Results
• After training, all three discriminators were run on a data set representing 7km2 of terrain. Target detection threshold was set to 100%.
• CAFR resulted in 4,455 false alarms.
• QGD resulted in 385 false alrams.
• NL-QGD resulted in 232 false alarms.
Tomahawk Missile Navigation
• Missile contains a map of terrain
• Figures out its current position from percepts (radar & altimeter)
• Uses a modified Gaussian least square differential correction algorithm, a step size limitation filter, and a radial basis function
Radial Basis Function
Gaussian Least Square Correction
Necessary Condition
Sufficient Condition
Step size limitation filter
Weight matrix
Tolerence error = 10^-8
Ethics
• Accountability– Legal– Political– Example: Aegis defense system shoots down an Iranian
Airbus jetliner in 1988
• Use of AI in warfare• Ethics of Research and Development
– Potential uses– Military Funding of AI– Passing of the blame “just doing my job”
Sources
• “Target Discrimination in Synthetic Aperture Radar (SAR) using Artificial Neural Networks” Jose C. Principe, Munchurl Kim, John W. Fisher III. Computational NeuroEngineering Laboratory. EB-486 Electrical and Computer Engineering Department. University of Florida.
• Sandia National Laboratories. http://www.sandia.gov/radar/sar.html
• Jet Propulsion Laboratory: California Institute of Technology. http://southport.jpl.nasa.gov/desc/imagingradarv3.html
• Wageningen University, The Netherlands. http://www.gis.wau.nl/sar/sig/sar_intr.htm