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📄 Abstract
Abstract: This paper introduces a novel multi-object tracking (MOT) method, dubbed
GenTrack, whose main contributions include: a hybrid tracking approach
employing both stochastic and deterministic manners to robustly handle unknown
and time-varying numbers of targets, particularly in maintaining target
identity (ID) consistency and managing nonlinear dynamics, leveraging particle
swarm optimization (PSO) with some proposed fitness measures to guide
stochastic particles toward their target distribution modes, enabling effective
tracking even with weak and noisy object detectors, integration of social
interactions among targets to enhance PSO-guided particles as well as improve
continuous updates of both strong (matched) and weak (unmatched) tracks,
thereby reducing ID switches and track loss, especially during occlusions, a
GenTrack-based redefined visual MOT baseline incorporating a comprehensive
state and observation model based on space consistency, appearance, detection
confidence, track penalties, and social scores for systematic and efficient
target updates, and the first-ever publicly available source-code reference
implementation with minimal dependencies, featuring three variants, including
GenTrack Basic, PSO, and PSO-Social, facilitating flexible reimplementation.
Experimental results have shown that GenTrack provides superior performance on
standard benchmarks and real-world scenarios compared to state-of-the-art
trackers, with integrated implementations of baselines for fair comparison.
Potential directions for future work are also discussed. The source-code
reference implementations of both the proposed method and compared-trackers are
provided on GitHub: https://github.com/SDU-VelKoTek/GenTrack
Authors (4)
Toan Van Nguyen
Rasmus G. K. Christiansen
Dirk Kraft
Leon Bodenhagen
Submitted
October 28, 2025
Key Contributions
Introduces GenTrack, a novel hybrid multi-object tracking method that combines stochastic (PSO-guided particle filter) and deterministic approaches to robustly handle unknown and time-varying numbers of targets. It leverages PSO with proposed fitness measures for efficient tracking even with weak detectors and integrates social interactions to improve ID consistency and reduce track loss, especially during occlusions.
Business Value
Enables more reliable tracking of multiple objects in complex scenarios, crucial for applications like autonomous navigation, security surveillance, and human-robot interaction.