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DOEYK: Detecting Objects with Enhanced YOLOv3 and Knowledge Graph

Award Information
Agency: Department of Defense
Branch: Defense Threat Reduction Agency
Contract: HDTRA121C0064
Agency Tracking Number: T2-0432
Amount: $1,100,000.00
Phase: Phase II
Program: STTR
Solicitation Topic Code: DTRA19B-002
Solicitation Number: 19.B
Timeline
Solicitation Year: 2019
Award Year: 2021
Award Start Date (Proposal Award Date): 2021-09-08
Award End Date (Contract End Date): 2021-09-08
Small Business Information
15400 Calhoun Drive Suite 190
Rockville, MD 20855-2814
United States
DUNS: 161911532
HUBZone Owned: No
Woman Owned: No
Socially and Economically Disadvantaged: No
Principal Investigator
 Gang Mei
 (301) 294-5257
 mgang@i-a-i.com
Business Contact
 Mark James
Phone: (301) 294-5221
Email: mjames@i-a-i.com
Research Institution
 University of Illinois at Urbana-Champaign (UIUC)
 Brenda Anne Wilson
 
506 South Wright Street
Urbana, IL 61801-0000
United States

 (217) 244-9631
 Nonprofit College or University
Abstract

Current state-of-the-art object detection algorithms are almost exclusively based on Deep Convolutional Neural Network (DCNN). These algorithms all require a large number of labeled examples for each of the object categories they can recognize. These algorithms will fail for novel objects that only very few or even no prior examples are available. These algorithms are also far less accurate when classifying partially occluded objects. In a life sciences laboratory, objects and equipment are often overlaying each other and being partially occluded, novel or custom-made equipment exists everywhere. To successfully detect and identify the laboratory equipment, IAI along with our collaborators, propose to design and implement an object detection framework. By incorporating an automatic knowledge graph into a modified YOLOv3 object detection framework, the proposed approach is capable of detecting novel and partially occluded objects and improving detection accuracy for all object categories. In Phase I, we successfully demonstrated the feasibility of the DOEYK object detection framework that leverages human knowledge distilled in knowledge graphs to help improve the object detection performance for laboratory equipment. In Phase II, we plan to build a full-fledged DOEYK prototype software that addresses DTRA’s needs.

* Information listed above is at the time of submission. *

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