Title
Constrained optimization for opportunistic distributed visual sensing
Abstract
Distributed networks of dynamically controllable pan-tilt-zoom (PTZ) cameras have high potential utility for tracking and high-res imaging of targets-of-interest maneuvering within a surveillance area. The actual utility that is achieved is determined by the real-time selection of the networked camera PTZ parameters to collaboratively achieve these objectives. This paper proposes a control mechanism for such a network to obtain opportunistic high-res facial imagery via distributed constrained optimization of PTZ parameters for each camera in the network. The objective function quantifies the per camera per target image quality. The tracking constraint that defines the feasible PTZ parameter space is a lower bound on the information about the estimated position for each target. All cameras optimize their PTZ parameters simultaneously using information broadcast by neighboring cameras. At certain time steps, due to the configuration of the targets relative to the cameras, and the fact that each camera may track many targets, the camera network may be able to achieve the tracking specification with remaining degrees-of-freedom that can be used to obtain high-res facial images from desirable aspect angles. The challenge is to define algorithms to automatically find these time instants, the appropriate imaging camera, and the appropriate parameter settings for all cameras to capitalize on these opportunities. The solution proposed herein involves a Bayesian formulation (for an automatic trade off of objective maximization versus the risk of losing track of any target), design of aligned local and global objective functions and the inequality constraint set, and development of a Distributed Lagrangian Consensus algorithm that allows cameras to exchange information and asymptotically converge on a pair of primal-dual optimal solutions. This article presents the theoretical solution along with simulation results.
Year
DOI
Venue
2013
10.1109/ACC.2013.6580825
American Control Conference
Keywords
Field
DocType
belief networks,cameras,face recognition,image resolution,real-time systems,surveillance,target tracking,Bayesian formulation,PTZ parameter space,asymptotic convergence,distributed Lagrangian consensus algorithm,distributed constrained PTZ parameter optimization,distributed networks,dynamically controllable PTZ cameras,dynamically controllable pan-tilt-zoom cameras,global objective functions,high-res imaging,inequality constraint set,local objective functions,opportunistic distributed visual sensing,opportunistic high-res facial imagery,primal-dual optimal solutions,real-time networked camera PTZ parameter selection,surveillance area,target tracking,targets-of-interest maneuvering
Facial recognition system,Broadcasting,Computer vision,Computer science,Upper and lower bounds,Image quality,Artificial intelligence,Parameter space,Image resolution,Maximization,Constrained optimization
Conference
ISSN
ISBN
Citations 
0743-1619
978-1-4799-0177-7
3
PageRank 
References 
Authors
0.41
7
4
Name
Order
Citations
PageRank
Akshay A. Morye1644.24
Ding, C.230.41
Amit K. Roy Chowdhury3115373.96
Jay A. Farrell486269.84