Near Real-Time, On-the-Move Multi-Sensor Integration and Computing Framework

被引:0
|
作者
Burnette, Chris [1 ]
Schneider, Matt [1 ]
Agarwal, Sanjeev [2 ]
Deterline, Diane [1 ]
Geyer, Chris [3 ]
Phan, Chung D. [2 ]
Lydic, Richard M., Jr. [2 ]
Green, Kevin [3 ]
Swett, Bruce [3 ]
机构
[1] EOIR Technol, Fredericksburg, VA 22408 USA
[2] US Army Night Vis & Elect Sensors Directorate, Ft Belvoir, VA USA
[3] EOIR Technol, Springfield, VA 22150 USA
关键词
Sensor integration framework; Vehicle computing; service architecture; near real-time; Route Clearance Patrols (RCPs); Mine detection;
D O I
10.1117/12.2177760
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
Implanted mines and improvised devices are a persistent threat to Warfighters. Current Army countermine missions for route clearance need on-the-move standoff detection to improve the rate of advance. Vehicle-based forward looking sensors such as electro-optical and infrared (EO/IR) devices can be used to identify potential threats in near real-time (NRT) at safe standoff distance to support route clearance missions. The MOVERS (Micro-Cloud for Operational, Vehicle-Based EO-IR Reconnaissance System) is a vehicle-based multi-sensor integration and exploitation system that ingests and processes video and imagery data captured from forward-looking EO/IR and thermal sensors, and also generates target/feature alerts, using the Video Processing and Exploitation Framework (VPEF) "plug and play" video processing toolset. The MOVERS Framework provides an extensible, flexible, and scalable computing and multi-sensor integration GOTS framework that enables the capability to add more vehicles, sensors, processors or displays, and a service architecture that provides low-latency raw video and metadata streams as well as a command and control interface. Functionality in the framework is exposed through the MOVERS SDK which decouples the implementation of the service and client from the specific communication protocols.
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页数:14
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