This work addresses the important problem of the discovery
and analysis of social networks from surveillance video.
A computer vision approach to this problem is made possible
by the proliferation of video data obtained from camera
networks, particularly state-of-the-art Pan-Tilt-Zoom (PTZ)
and tracking camera systems that have the capability to acquire
high-resolution face images as well as tracks of people
under challenging conditions. We perform “opportunistic”
face recognition on captured images and compute motion
similarities between tracks of people on the ground plane.
To deal with the unknown correspondences between faces
and tracks, we present a novel graph-cut based algorithm
to solve this association problem. It enables the robust estimation
of a social network that captures the interactions
between individuals in spite of large amounts of noise in
the datasets. We also introduce an algorithm that we call
“modularity-cut”, which is an Eigen-analysis b...
Ting Yu, Ser Nam Lim, Kedar A. Patwardhan, Nils Kr