HDTRA123P0025
Purchase Order
Overview
Government Description
SBIR phase I - deep machine learning for isotope identification and quantification using atom trap trace analysis
Awardee
Awarding Agency
Funding Agency
Place of Performance
Woburn, MA 1801 United States
Pricing
Fixed Price
Set Aside
Small Business Set Aside - Total (SBA)
Extent Competed
Full And Open Competition After Exclusion Of Sources
Related Opportunity
None
Analysis Notes
Amendment Since initial award the Potential End Date has been shortened from 02/29/24 to 01/25/24.
SKY Park Labs was awarded
Purchase Order HDTRA123P0025 (HDTRA1-23-P-0025)
for Sbir Phase I - Deep Machine Learning For Isotope Identification And Quantification Using Atom Trap Trace Analysis
worth up to $167,500
by Defense Threat Reduction Agency
in July 2023.
The contract
has a duration of 6 months and
was awarded
with a Small Business Total set aside
with
NAICS 541715 and
PSC AC33
via direct negotiation acquisition procedures with 7 bids received.
SBIR Details
Research Type
Small Business Innovation Research Program (SBIR) Phase I
Title
Deep Learning for Isotope Identification and Quantification using Atom Trap Trace Analysis
Abstract
Atom Trap Trace Analysis (ATTA) has proven to be a valuable technique for detecting rare gas radioisotopes. By tuning the frequency of a laser to the resonance of a desired isotope, only atoms of that isotope are captured by a magneto-optical trap (MOT) and detected by observing its fluorescence with a CCD camera. Existing approaches rely on manually selecting a region-of-interest (ROI) of image pixels where the atoms' fluorescence signal occurs and then integrating the count in the corresponding region to determine the atom count. Querying for a specific isotope typically produces thousands of images so this manual analysis can be time-consuming and laborious. To automate this process, image analysis algorithms need to handle challenges like scattered light or detector noise, fleeting atoms due to CCD exposure time, and spurious camera events due to cosmic rays and x-rays. Sky Park Labs proposes DeepATTA (Deep Learning for isotope identification and quantification using Atom Trap Trace Analysis), a software suite comprised of machine learning algorithms which will automatically identify and quantify atoms in images produced by ATTA systems in near real-time. DeepATTA employs feature learning techniques to learn a latent representation from unlabeled ATTA images. This representation serves as the backbone for the image analysis pipeline. The analysis pipeline includes atom detection, image denoising, and event classification, to provide efficient and accurate atom counting. The atom detection module uses a machine learning-based detection framework built upon the learned feature to automatically detect and segment the image pixels corresponding to the atoms' fluorescence signal. These regions are then processed by an image denoising module to remove residual noise that occur in extreme low abundance detection. The resulting image can then be integrated to calculate an accurate atom count. Specific events require specialized processing to yield an accurate atom count. To that end, the event classification module flags the occurrence of specific events, such as high atomic concentrations and spurious events, for additional management. Since spurious events constitute a rare event, DeepATTA learns a model of normal behavior exclusively on fault-free, normal data and flags any deviations as potential spurious events. The proposed system represents a substantial advancement in the state-of-the-art and will significantly enhance the turnaround time of sample analysis, moving closer to near real-time monitoring of rare gas radionuclides.
Research Objective
The goal of phase I is to establish the technical merit, feasibility, and commercial potential of proposed R&D efforts and determine the quality of performance of the small business awardee organization.
Topic Code
DTRA224-001
Agency Tracking Number
T224-001-0008
Solicitation Number
22.4
Contact
Neal Checka
Status
(Closed)
Last Modified 1/31/25
Period of Performance
7/31/23
Start Date
1/25/24
Current End Date
1/25/24
Potential End Date
Obligations
$167.5K
Total Obligated
$167.5K
Current Award
$167.5K
Potential Award
Award Hierarchy
Purchase Order
HDTRA123P0025
Subcontracts
Activity Timeline
Transaction History
Modifications to HDTRA123P0025
People
Suggested agency contacts for HDTRA123P0025
Competition
Number of Bidders
7
Solicitation Procedures
Negotiated Proposal/Quote
Evaluated Preference
None
Commercial Item Acquisition
Commercial Item Procedures Not Used
Simplified Procedures for Commercial Items
No
Other Categorizations
Subcontracting Plan
Plan Not Required
Cost Accounting Standards
Exempt
Business Size Determination
Small Business
Defense Program
None
DoD Claimant Code
None
IT Commercial Item Category
Not Applicable
Awardee UEI
KU1LR5NRBCR8
Awardee CAGE
88FV9
Agency Detail
Awarding Office
S2206A DCMA NORTHEAST
Funding Office
HDTRA1
Created By
sysorig@sa9700.piee
Last Modified By
fpdsadmin
Approved By
marcia.snyder@dcma.mil
Legislative
Legislative Mandates
None Applicable
Performance District
MA-05
Senators
Edward Markey
Elizabeth Warren
Elizabeth Warren
Representative
Katherine Clark
Budget Funding
| Federal Account | Budget Subfunction | Object Class | Total | Percentage |
|---|---|---|---|---|
| Research, Development, Test, and Evaluation, Defense-Wide (097-0400) | Department of Defense-Military | Research and development contracts (25.5) | $167,500 | 100% |
Modified: 1/31/25