people re-identification. The proposed system tracks
people and their faces allowing the user to associate
an appearance with a face. In most networks,
cameras cannot provide the full people appearance
view (e.g. strong occlusion) and faces are often not
visible or only partly visible. Our proposed approach
would allow a user to scan throughout a network of
surveillance cameras the best matching candidates
and to be able to track people of interest throughout
this network.
ACKNOWLEDGEMENTS
We would like to thank the ANR project ’VideoId’
who partially founded this work and the following
partners of the project: Biometrics Groups at TELE-
COM SudParis, Multimedia Image processing Group
of Eurecom and T3S (Thales Security Systems and
Solutions S.A.S.).
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