HR001123C0157
Definitive Contract
Overview
Government Description
SBIR PHASE II EXCEEDING LIMITS BEYOND ORDINARY WEARABLES (ELBOW) PROJECT
Awardee
Awarding / Funding Agency
Place of Performance
Boulder, CO 80301 United States
Pricing
Fixed Price
Set Aside
Small Business Set Aside - Total (SBA)
Extent Competed
Full And Open Competition After Exclusion Of Sources
Est. Average FTE
3
Related Opportunity
Analysis Notes
Amendment Since initial award the Potential End Date has been shortened from 08/31/26 to 08/05/26.
Xeed was awarded
Definitive Contract HR001123C0157 (HR0011-23-C-0157)
for Sbir Phase Ii Exceeding Limits Beyond Ordinary Wearables (ELBOW) Project
worth up to $1,726,448
by Defense Advanced Research Projects Agency
in August 2023.
The contract
has a duration of 3 years and
was awarded
through solicitation Small Business Innovation Research (SBIR) and Small Business Technology Transfer (STTR)
with a Small Business Total set aside
with
NAICS 541715 and
PSC AC12
via direct negotiation acquisition procedures with 3 bids received.
SBIR Details
Research Type
Small Business Innovation Research Program (SBIR) Phase II
Title
Exceeding Limits Beyond Ordinary Wearables (ELBOW)
Abstract
The project aims to create a framework for real-time wearable sensor analysis that can be used to monitor warfighter health and readiness. There are two parts to the work: Framework and Model. The framework will be built on a smartphone and provides the flexibility to add any number of Bluetooth Low Energy wearable sensors and/or internal smartphone sensors while maintaining low energy consumption. The framework will be modular so that different data analysis models can be swapped out and experimented with. The models will include different artificial intelligence and machine learning algorithms that can recognize human activity and anomalies to be used for personal health determination. The project differentiates itself from others by using IMU pose-based multi-wearable data instead of raw sensor data from multiple wearables. This type of data is of particular interest because although there is plenty of research on camera-based pose data, there is very little on IMU-based pose data. The use of an integrated full-body tracking system corrects noise from individual sensors through corrections found from sensor fusion of full-body data. The pose data is also used as a verification method for the data itself as pose data is easily visualized and understood by the human eye which provides a convenient way to label the information. The labels will consist of hierarchical structures to help the machine learning algorithms better differentiate between activities. The human activity recognition models include experimenting with full-body pose data on the three types of categories: Template, Generative, and Discriminative. Specifically, the tested algorithms are Dynamic Time Warping, Hierarchical Hidden Markov Model (HHMM), and the Random Forest Classifier. To verify that the models work as intended, work will be performed to automatically create poses that can be properly classified by the model. This will be done with Generative Adversarial Networks as their main goal is to find the important features in data that lead to the classification. This way, a large amount of properly labeled data can be artificially created without having to do manual data collection. The anomaly detection models are split into two parts: i) anomaly within activity and ii) anomaly within routines. Within an activity, anomalies are found through outlier analysis such that data points that differ too greatly from the usual way the person would perform the activity are flagged. Within routines, the anomalies can be found using an HHMM. As all the state transitions have a dynamic probability, anomalies are transitions that occur even though they have a low probability of occurring. Similar to human activity pose generation, verification is done by simulating anomalous data within activities and by simulating anomalous routines. As before, these outputs can then be manually checked using the pose data viewer.
Research Objective
The goal of phase II is to continue the R&D efforts initiated in Phase I. Funding is based on the results achieved in Phase I and the scientific and technical merit and commercial potential of the project proposed in Phase II.
Topic Code
HR0011SB20234-05
Agency Tracking Number
D2D-0523
Solicitation Number
23.4
Contact
Sade Oba
Status
(Open)
Last Modified 7/31/25
Period of Performance
8/31/23
Start Date
8/5/26
Current End Date
8/5/26
Potential End Date
Obligations
$1.7M
Total Obligated
$1.7M
Current Award
$1.7M
Potential Award
Award Hierarchy
Definitive Contract
HR001123C0157
Subcontracts
Activity Timeline
Opportunity Lifecycle
Procurement history for HR001123C0157
Transaction History
Modifications to HR001123C0157
People
Suggested agency contacts for HR001123C0157
Competition
Number of Bidders
3
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
FEB9BJYDEGD5
Awardee CAGE
7T5E7
Agency Detail
Awarding Office
HR0011 DEF ADVANCED RESEARCH PROJECTS AGCY
Funding Office
HR0011
Created By
james.ritch@darpa.mil
Last Modified By
james.ritch@darpa.mil
Approved By
james.ritch@darpa.mil
Legislative
Legislative Mandates
None Applicable
Performance District
CO-02
Senators
Michael Bennet
John Hickenlooper
John Hickenlooper
Representative
Joe Neguse
Modified: 7/31/25