SBIR-STTR Award

SELMA (Semantic Exploration of Large Multi-modal Archives)
Award last edited on: 2/20/2015

Sponsored Program
SBIR
Awarding Agency
DOD : OSD
Total Award Amount
$589,215
Award Phase
2
Solicitation Topic Code
OSD11-DR4
Principal Investigator
Yuri Levchuk

Company Information

Intelligent Models Inc

9710 Traville Gateway Drive
Rockville, MD 20850
   (301) 236-5150
   info@intelligentmodels.com
   www.intelligentmodels.com
Location: Single
Congr. District: 08
County: Montgomery

Phase I

Contract Number: ----------
Start Date: ----    Completed: ----
Phase I year
2012
Phase I Amount
$149,044
Human Social and Cultural and Behavior (HSCB) models are increasingly used to provide critical support to US military decision making. HSCB models are highly reliant on data; they need data from many sources, types, and areas of human behavior. The concomitant data streams have variable data quality and are constantly changing. Despite these challenges, HSCB applications may need near real-time access to relevant knowledge to make rapid decisions. To promote rapid acquisition and effective use of relevant HSCB knowledge, we propose SELMA (Semantic Exploration of Large Multi-modal Archives) which automates the processes of: (1) semantic cross-modal exploration of HSCB archives (to link people, events, objects, knowledge, and actions); (2) data-mining to fill gaps in information, resolve uncertainty, and classify behaviors and events; (3) mission-critical HSCB knowledge discovery; and (4) binding and visualizing the captured HSCB insights and semantic knowledge. Together, these components allow SELMA to offer a solution to HSCB data needs that: (1) collects, stores, and analyses mission-critical HSCB insights, (2) works autonomously for extended periods of time, and (3) actively reasons over the regional Human Terrains. SELMA dynamically creates an HSCB knowledge meta-network, explores concepts, discovers relationships with certain properties, and carries out versatile on-demand analyses.

Keywords:
Heterogeneous HSCB data, Cross-modal semantic exploration, Multi-layered inference Meaning extraction, Semantic HSCB models, Knowledge gaps, Semantic reasoning

Phase II

Contract Number: ----------
Start Date: ----    Completed: ----
Phase II year
2013
Phase II Amount
$440,171
Human Social and Cultural and Behavior (HSCB) models are increasingly used to provide critical support to US military decision making. HSCB models are highly reliant on data; they need data from many sources, types, and areas of human behavior. The concomitant data streams have variable data quality and are constantly changing. Despite these challenges, HSCB applications may need near real-time access to relevant knowledge to make rapid decisions. To promote rapid acquisition and effective use of relevant HSCB knowledge, we propose SELMA (Semantic Exploration of Large Multi-modal Archives) which automates the processes of: (1) semantic cross-modal exploration of HSCB archives (to link people, events, objects, knowledge, and actions); (2) data-mining to fill gaps in information, resolve uncertainty, and classify behaviors and events; (3) mission-critical HSCB knowledge discovery; and (4) binding and visualizing the captured HSCB insights and semantic knowledge. Together, these components allow SELMA to offer a solution to HSCB data needs that: (1) collects, stores, and analyses mission-critical HSCB insights, (2) works autonomously for extended periods of time, and (3) actively reasons over the regional Human Terrains. SELMA dynamically creates an HSCB knowledge meta-network, explores concepts, discovers relationships with certain properties, and carries out versatile on-demand analyses.

Keywords:
Heterogeneous HSCB data, Cross-modal semantic exploration, Multi-layered inference, Meaning extraction, Semantic HSCB models, Knowledge gaps, Semantic reasoning