Loren Data's SAM Daily™

fbodaily.com
Home Today's SAM Search Archives Numbered Notes CBD Archives Subscribe
SAMDAILY.US - ISSUE OF DECEMBER 06, 2023 SAM #8044
SOURCES SOUGHT

A -- AiDTR RFI

Notice Date
12/4/2023 12:01:32 PM
 
Notice Type
Sources Sought
 
NAICS
541330 — Engineering Services
 
Contracting Office
W4GG HQ US ARMY TACOM DETROIT ARSENAL MI 48397-5000 USA
 
ZIP Code
48397-5000
 
Solicitation Number
W56HZV_AiDTR_RFI
 
Response Due
1/12/2024 2:00:00 PM
 
Archive Date
01/27/2024
 
Point of Contact
Edlira Willer, Phone: 571-588-9435, Ashraf Samuel, Phone: 586-571-5048
 
E-Mail Address
edlira.willer.civ@army.mil, ashraf.i.samuel.ctr@army.mil
(edlira.willer.civ@army.mil, ashraf.i.samuel.ctr@army.mil)
 
Description
The U.S Army seeks to shorten the sensor to shooter engagement timeline through use of Machine Learning (ML) based Aided Target Detection and Recognition (AiTDR) algorithms. Traditional ML techniques focuses on Aided Target Recognition (AiTR) which requires the burden of a large training image database comprised of a diverse set of specific targets each captured under a comprehensive set of unique conditions (e.g. background terrain, target pose, lighting, partial occlusion etc). This limits the ability to detect new targets or trained targets under new/untrained condition. Although AiTR remains a valuable and required capability, this Request For Information (RFI) seeks to understand the state of AiTDR solutions that have optimized ML AiTD algorithms for the robust (i.e. reliable, intuitive and adaptive) detection of both trained as well as new/untrained targets in both trained as well as untrained conditions. We are prioritizing greater value in being able to reliably detect generic classes of targets than to reliably identify specific targets, but potentially miss a valid, but insufficiently trained-on target.
 
Web Link
SAM.gov Permalink
(https://sam.gov/opp/d3ddaa9d736a4fcab76a0ae5cdf5a6cd/view)
 
Place of Performance
Address: Warren, MI, USA
Country: USA
 
Record
SN06902025-F 20231206/231204230056 (samdaily.us)
 
Source
SAM.gov Link to This Notice
(may not be valid after Archive Date)

FSG Index  |  This Issue's Index  |  Today's SAM Daily Index Page |
ECGrid: EDI VAN Interconnect ECGridOS: EDI Web Services Interconnect API Government Data Publications CBDDisk Subscribers
 Privacy Policy  Jenny in Wanderland!  © 1994-2024, Loren Data Corp.