Neural net algorithm for target ID trained on simulated data

Simulation-based training for target acquisition algorithms is an important goal for reducing the cost and risk associated with live data collections. To this end, the US Army Night Vision and Electronic Sensors Directorate (NVESD) has developed high-fidelity virtual scenes of terrains and targets u...

Full description

Saved in:
Bibliographic Details
Main Authors Howell, Christopher L, Manser, Kimberly, Olson, Jeffrey
Format Conference Proceeding
LanguageEnglish
Published SPIE 26.04.2018
Online AccessGet full text
ISBN9781510617612
1510617612
ISSN0277-786X
DOI10.1117/12.2305660

Cover

More Information
Summary:Simulation-based training for target acquisition algorithms is an important goal for reducing the cost and risk associated with live data collections. To this end, the US Army Night Vision and Electronic Sensors Directorate (NVESD) has developed high-fidelity virtual scenes of terrains and targets using the DIRSIG in pursuit of a virtual DRI (detect, recognize, identify) capability. In this study, the NVESD has developed a neural network (NN) algorithm that can be trained on simulated data to classify targets of interest when presented with real data. This paper discusses the classification performance of a NN algorithm and the potential impact training with simulated data has on algorithm performance.
Bibliography:Conference Location: Orlando, Florida, United States
Conference Date: 2018-04-15|2018-04-19
ISBN:9781510617612
1510617612
ISSN:0277-786X
DOI:10.1117/12.2305660