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Computer vision / 3D single object recognition / Object recognition / Leabra / Visual cortex / Vision / Artificial intelligence / Optics
Date: 2014-04-29 09:01:31
Computer vision
3D single object recognition
Object recognition
Leabra
Visual cortex
Vision
Artificial intelligence
Optics

Unposed Object Recognition using an Active Approach Wallace Lawson, J. Gregory Trafton Naval Center for Applied Research in Artificial Intelligence, Washington, DC {ed.lawson, greg.trafton}@nrl.navy.mil Keywords:

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