SBIR-STTR Award

Deep Focus: Using Deep Learning to Discern Targets in Cluttered Radar
Award last edited on: 8/28/2024

Sponsored Program
SBIR
Awarding Agency
DOD : Army
Total Award Amount
$2,140,466
Award Phase
2
Solicitation Topic Code
A17-133
Principal Investigator
Stanislav Shalunov

Company Information

Clostra Inc

55 Taylor Street
San Fransisco, CA 94102
   (415) 275-3415
   contact@clostra.com
   www.clostra.com
Location: Single
Congr. District: 12
County: San Francisco

Phase I

Contract Number: W911W6-18-C-0020
Start Date: 1/5/2018    Completed: 5/15/2019
Phase I year
2018
Phase I Amount
$149,786
Deep Focus applies deep learning neural nets to Apache Fire Control Radar (FCR) targeting and target identification, with applicability to related systems. Recent innovations in deep learning theory and implementation have enabled neural nets to achieve what was once unthinkable:beat humans at complex image recognition skills, safely pilot cars over chaotic road systems, and overwhelm Grandmaster Lee Sedol in the game of Go, a challenge previously thought immune to AI because of the game's near-infinite complexity.Deep Focus analyzes the FCR return radar signal and accurately identifies targets despite extremely high noise.While training a deep neural net is computationally intensive and requires specialized hardware,execution is computationally inexpensive and can be implemented with very modest CPU and memory requirements.Phase 1 of the project determines feasibility by training a deep learning neural net to analyze radar images and output an accurate target identification.The success metrics include false negative and false positive rates for radar targets.Computer vision and deep learning are core CLOSTRA competences.

Phase II

Contract Number: W911W6-19-C-0032
Start Date: 11/15/2018    Completed: 5/23/2021
Phase II year
2019
(last award dollars: 2023)
Phase II Amount
$1,990,680

Deep Focus applies deep learning neural networks to Apache Fire Control Radar (FCR) targeting and target identification, with applicability to related systems. Recent innovations in deep learning theory and implementation have enabled neural nets to achieve what was once unthinkable:beat humans at complex image recognition skills, safely pilot cars over chaotic road systems, and overwhelm Grandmaster Lee Sedol in the game of Go, a challenge previously thought immune to AI because of the games near-infinite complexity.Deep Focus builds upon Phase I results to more accurately identify vehicular targets despite high noise.While training a deep neural net is computationally intensive and requires specialized hardware,execution is computationally inexpensive and can be implemented with very modest CPU and memory requirements.Phase 1 of the project proved the feasibility of the theory by training a deep learning neural net to analyze radar images and output an accurate target identification.The success metrics included false negative and false positive rates for radar targets.Phase II builds upon the highly successful Phase I results and augments Deep Focus's classification accuracy and flexibility by training on a wide range of new datasets.Computer vision and deep learning are core CLOSTRA competences.