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Multi-Instance Learning Models for Automated Support of Analysts in Simulated Surveillance EnvironmentsNew generations of surveillance drones are being outfitted with numerous high definition cameras. The rapid proliferation of fielded sensors and supporting capacity for processing and displaying data will translate into ever more capable platforms, but with increased capability comes increased complexity and scale that may diminish the usefulness of such platforms to human operators. We investigate methods for alleviating strain on analysts by automatically retrieving content specific to their current task using a machine learning technique known as Multi-Instance Learning (MIL). We use MIL to create a real time model of the analysts' task and subsequently use the model to dynamically retrieve relevant content. This paper presents results from a pilot experiment in which a computer agent is assigned analyst tasks such as identifying caravanning vehicles in a simulated vehicle traffic environment. We compare agent performance between MIL aided trials and unaided trials.
Document ID
20110012111
Acquisition Source
Langley Research Center
Document Type
Conference Paper
Authors
Birisan, Mihnea
(Virginia Univ. VA, United States)
Beling, Peter
(Virginia Univ. VA, United States)
Date Acquired
August 25, 2013
Publication Date
March 1, 2011
Publication Information
Publication: Selected Papers and Presentations Presented at MODSIM World 2010 Conference and Expo
Subject Category
Systems Analysis And Operations Research
Distribution Limits
Public
Copyright
Work of the US Gov. Public Use Permitted.
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