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CSAOT: Cooperative Multi-Agent System for Active Object Tracking

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posted on 2025-11-25, 04:50 authored by Hy Nguyen, Bao Pham, Srikanth ThudumuSrikanth Thudumu, Hung Du, Rajesh VasaRajesh Vasa, Kon MouzakisKon Mouzakis
Object Tracking is essential for many computer vision applications, such as autonomous navigation, surveillance, and robotics. Unlike Passive Object Tracking (POT), which relies on static camera viewpoints to detect and track objects across consecutive frames, Active Object Tracking (AOT) requires a controller agent to actively adjust its viewpoint to maintain visual contact with a moving target in complex environments. Existing AOT solutions are predominantly single-agent-based, which struggle in dynamic and complex scenarios due to limited information gathering and processing capabilities, often resulting in suboptimal decision-making. Alleviating these limitations necessitates the development of a multi-agent system where different agents perform distinct roles and collaborate to enhance learning and robustness in dynamic and complex environments. Although some multi-agent approaches exist for AOT, they typically rely on external auxiliary agents, which require additional devices, making them costly. In contrast, we introduce the Collaborative System for Active Object Tracking (CSAOT), a method that leverages multi-agent deep reinforcement learning (MADRL) and a Mixture of Experts (MoE) framework to enable multiple agents to operate on a single device, thereby improving tracking performance and reducing costs. Our approach enhances robustness against occlusions and rapid motion while optimizing camera movements to extend tracking duration. We validated the effectiveness of CSAOT on various interactive maps with dynamic and stationary obstacles.

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Location

Bologna, Italy

Open access

  • Yes

Language

eng

Pagination

2122-2129

Start date

2025-10-25

End date

2025-10-30

ISSN

0922-6389

eISSN

1879-8314

Title of proceedings

ECAI 2025 : Proceedings of the 28th European Conference on Artificial Intelligence Including 14th Conference on Prestigious Applications of Intelligent Systems (PAIS 2025)

Event

Artificial Intelligence. Conference (2025 : 28th : Bologna, Italy)

Publisher

IOS Press

Series

Frontiers in Artificial Intelligence and Applications

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