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High Quality/Low Dimension Data for Sensor Integration

Award Information
Agency: Department of Defense
Branch: Air Force
Contract: FA8750-16-C-0303
Agency Tracking Number: F15A-T16-0208
Amount: $749,999.00
Phase: Phase II
Program: STTR
Solicitation Topic Code: AF15-AT16
Solicitation Number: 2015.0
Timeline
Solicitation Year: 2015
Award Year: 2016
Award Start Date (Proposal Award Date): 2016-09-16
Award End Date (Contract End Date): 2018-09-16
Small Business Information
Beeches Professional Campus
Rome, NY 13440
United States
DUNS: 883336190
HUBZone Owned: No
Woman Owned: No
Socially and Economically Disadvantaged: No
Principal Investigator
 Dr. Richard Loe
 (315) 334-1163
 rloe@androcs.com
Business Contact
 Thomas Benjamin
Phone: (315) 334-1163
Email: tbenjamin@androcs.com
Research Institution
 SyracuseUniversity
 Dr. Pramod Varshney
 
113 Browne Hall
Syracuse, NY 13244
United States

 (315) 443-4013
 Nonprofit College or University
Abstract

Novel algorithms were developed for ecient multi-sensor fusion of correlated high-dimensional data to support target detection. In our compressive sensing framework, high-dimensional data is compressed using low dimensional random projection matrices. When the high-dimensional data exhibits low-dimensional structures, this scheme is capable of capturing all the significant informative with fewer random projections. Copula theory permits exploitation of correlation between sensors to significantly enhance system performance as compared to that of traditional systems that assume independence. Testing was performed on multisensor data sets including physics-based simulations and real-world seismic data. The performance of the algorithms was compared to benchmark algorithms. The results demonstrate our approach is superior to current methods for both individual sensors and multiple fused sensors. Furthermore, our fusion results demonstrate performance gains for multiple sensors compared to single sensors. The approach provides significant reductions in communication bandwidth requirements compared to systems that transmit raw sensor data to a central fusion center. In Phase II, we propose to enhance the current algorithms and adapt the approach to additional sensor types. We will work with our transition partners to derive requirements and test performance on data from systems of interest to the DoD and commercial markets.Novel algorithms were developed for ecient multi-sensor fusion of correlated high-dimensional data to support target detection. In our compressive sensing framework, high-dimensional data is compressed using low dimensional random projection matrices. When the high-dimensional data exhibits low-dimensional structures, this scheme is capable of capturing all the significant informative with fewer random projections. Copula theory permits exploitation of correlation between sensors to significantly enhance system performance as compared to that of traditional systems that assume independence. Testing was performed on multisensor data sets including physics-based simulations and real-world seismic data. The performance of the algorithms was compared to benchmark algorithms. The results demonstrate our approach is superior to current methods for both individual sensors and multiple fused sensors. Furthermore, our fusion results demonstrate performance gains for multiple sensors compared to single sensors. The approach provides significant reductions in communication bandwidth requirements compared to systems that transmit raw sensor data to a central fusion center. In Phase II, we propose to enhance the current algorithms and adapt the approach to additional sensor types. We will work with our transition partners to derive requirements and test performance on data from systems of interest to the DoD and commercial markets.

* Information listed above is at the time of submission. *

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