21 - 25 April 2024
National Harbor, Maryland, US
Conference 13055 > Paper 13055-12
Paper 13055-12

Transfer learning for adaptable autonomy

On demand | Presented live 24 April 2024

Abstract

We explore the use of transfer learning to reduce the data and computing resources required for training convolutional neural networks used by autonomous vehicles for predicting target behavior and improving target tracking as the scenario/environment changes. We demonstrate the ability to adapt to four different changes to the baseline scenario: a new target behavior, mission, adversary, and environment. The results from all four scenarios demonstrate positive transfer learning with reduced training datasets and show that transfer learning is a robust approach to dealing with changing environments even when the input or output dimensions of the neural network are changed.

Presenter

General Dynamics Missions Systems (United States)
Patrick Haggerty received a BA from Oberlin College and a MS and PhD in Mathematics from Indiana University, where he researched the geometry of the symplectic group, mapping class groups, and Teichmueller theory. He joined General Dynamics in 2021 and works on state estimation, multi-agent autonomy, optimization, and network resiliency.
Application tracks: AI/ML
Author
General Dynamics Mission Systems (United States)
Author
General Dynamics Mission Systems (United States)
Presenter/Author
General Dynamics Missions Systems (United States)