CVAPMEJul 5, 2025

Integrated Gaussian Processes for Robust and Adaptive Multi-Object Tracking

arXiv:2507.04116v12 citationsh-index: 16
Originality Incremental advance
AI Analysis

This addresses tracking robustness for applications like radar surveillance, though it appears incremental with enhancements to existing methods.

The paper tackles multi-object tracking in challenging environments by introducing two robust and adaptive trackers, GaPP-Class and GaPP-ReaCtion, which reduce track breaks by around 30% on real radar data and more on simulated data while learning parameters online and inferring object classes.

This paper presents a computationally efficient multi-object tracking approach that can minimise track breaks (e.g., in challenging environments and against agile targets), learn the measurement model parameters on-line (e.g., in dynamically changing scenes) and infer the class of the tracked objects, if joint tracking and kinematic behaviour classification is sought. It capitalises on the flexibilities offered by the integrated Gaussian process as a motion model and the convenient statistical properties of non-homogeneous Poisson processes as a suitable observation model. This can be combined with the proposed effective track revival / stitching mechanism. We accordingly introduce the two robust and adaptive trackers, Gaussian and Poisson Process with Classification (GaPP-Class) and GaPP with Revival and Classification (GaPP-ReaCtion). They employ an appropriate particle filtering inference scheme that efficiently integrates track management and hyperparameter learning (including the object class, if relevant). GaPP-ReaCtion extends GaPP-Class with the addition of a Markov Chain Monte Carlo kernel applied to each particle permitting track revival and stitching (e.g., within a few time steps after deleting a trajectory). Performance evaluation and benchmarking using synthetic and real data show that GaPP-Class and GaPP-ReaCtion outperform other state-of-the-art tracking algorithms. For example, GaPP-ReaCtion significantly reduces track breaks (e.g., by around 30% from real radar data and markedly more from simulated data).

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