SBIR-STTR Award

Algorithm Development for Predictive Battlespace Awareness
Award last edited on: 11/12/2009

Sponsored Program
SBIR
Awarding Agency
DOD : AF
Total Award Amount
$99,998
Award Phase
1
Solicitation Topic Code
AF083-150
Principal Investigator
Mark Schmal

Company Information

Ultrahinet LLC

709 Southwest 80th Boulevard
Gainesville, FL 32607
   (352) 281-2867
   sahni@cise.ufl.edu
   N/A
Location: Single
Congr. District: 03
County: Alachua

Phase I

Contract Number: ----------
Start Date: ----    Completed: ----
Phase I year
2009
Phase I Amount
$99,998
UltraHiNet, LLC (UHN) proposes to develop innovative high-performance computational strategies for real-time (RT) CSAR auto-mated target recognition (ATR) and coherent change detection (CCD). These strategies will enable sustained tera to petaflop computational rates for CSAR and will support very high I/O rates to meet the real-time (RT) demands for staring CSAR observation of areas up to 20KM in diameter using architectures that meet the size, weight, power and other constraints of on-board processing systems. We propose to lev-erage our existing expertise for developing and mapping image and signal processing algorithms to parallel RT architectures (CSPARTA), to achieve the following Phase 1 objectives: (a) Analysis of GFI (government furnished information) CSAR algo-rithms as well as of application specific data collection rates to determine key parameters including operation mix, data lay-out, I/O requirements, and computational accuracy; (b) Mapping of GFI CSAR algorithms to parallel RT architectures (e.g., multicore, GPU, FPGA, clusters of such processors, etc.) that meet the size, weight, and power constraints of an on-board processing system; (c) Performance analysis of parallel RT implementations of the CSAR algorithms, to include computational and I/O cost, as well as error propagation and accumulation; and provide prototype imple-mentation on one multicore processor.

Benefit:
The proposed research will constitute a breakthrough in the solu-tion of problems related to improved performance for efficient, accu-rate image reconstruction from multiple views. These problems occur extensively throughout both the military and commercial sectors: the potential payoff is high. UHN will license or sell the solution to large aerospace and avionics companies for military applications. In addition, we plan to collaborate with commercial companies involved in law enforcement technologies, environmental monitoring and medical imaging applications.

Keywords:
Csar Automated Target Recognition (Atr), Coherent Change Detection (Ccd), High-Performance Computing, Parallel Computing, Real-Time Image Processing, Computational System Pe

Phase II

Contract Number: ----------
Start Date: ----    Completed: ----
Phase II year
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Phase II Amount
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