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Computer hardware / Capturx / Science / ArcGIS / Esri / Handwriting recognition / Geographic information system / Command Post of the Future / DARPA / GIS software / Technology / Cartography
Date: 2013-08-08 13:17:39
Computer hardware
Capturx
Science
ArcGIS
Esri
Handwriting recognition
Geographic information system
Command Post of the Future
DARPA
GIS software
Technology
Cartography

Multimodal Command Interaction VALUE PROPOSITION CONTACT INFORMATION

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