Dynamic Network Flow Optimization for Task Scheduling in PTZ Camera Surveillance Systems
Journal:
arXiv
Published Date:
May 7, 2025
Abstract
This paper presents a novel approach for optimizing the scheduling and
control of Pan-Tilt-Zoom (PTZ) cameras in dynamic surveillance environments.
The proposed method integrates Kalman filters for motion prediction with a
dynamic network flow model to enhance real-time video capture efficiency. By
assigning Kalman filters to tracked objects, the system predicts future
locations, enabling precise scheduling of camera tasks. This prediction-driven
approach is formulated as a network flow optimization, ensuring scalability and
adaptability to various surveillance scenarios. To further reduce redundant
monitoring, we also incorporate group-tracking nodes, allowing multiple objects
to be captured within a single camera focus when appropriate. In addition, a
value-based system is introduced to prioritize camera actions, focusing on the
timely capture of critical events. By adjusting the decay rates of these values
over time, the system ensures prompt responses to tasks with imminent
deadlines. Extensive simulations demonstrate that this approach improves
coverage, reduces average wait times, and minimizes missed events compared to
traditional master-slave camera systems. Overall, our method significantly
enhances the efficiency, scalability, and effectiveness of surveillance
systems, particularly in dynamic and crowded environments.