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Autori principali: Liu, Minti, Guo, Qinghua, Zeng, Cao, Yu, Yanguang, Li, Jun, Jin, Ming
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2510.25020
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author Liu, Minti
Guo, Qinghua
Zeng, Cao
Yu, Yanguang
Li, Jun
Jin, Ming
author_facet Liu, Minti
Guo, Qinghua
Zeng, Cao
Yu, Yanguang
Li, Jun
Jin, Ming
contents This work addresses the problem of tracking maneuvering objects with complex motion patterns, a task in which conventional methods often struggle due to their reliance on predefined motion models. We integrate a data-driven liquid neural network (LNN) into the random finite set (RFS) framework, leading to two LNN-RFS filters. By learning continuous-time dynamics directly from data, the LNN enables the filters to adapt to complex, nonlinear motion and achieve accurate tracking of highly maneuvering objects in clutter. This hybrid approach preserves the inherent multi-object tracking strengths of the RFS framework while improving flexibility and robustness. Simulation results on challenging maneuvering scenarios demonstrate substantial gains of the proposed hybrid approach in tracking accuracy.
format Preprint
id arxiv_https___arxiv_org_abs_2510_25020
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Hybrid Liquid Neural Network-Random Finite Set Filtering for Robust Maneuvering Object Tracking
Liu, Minti
Guo, Qinghua
Zeng, Cao
Yu, Yanguang
Li, Jun
Jin, Ming
Signal Processing
This work addresses the problem of tracking maneuvering objects with complex motion patterns, a task in which conventional methods often struggle due to their reliance on predefined motion models. We integrate a data-driven liquid neural network (LNN) into the random finite set (RFS) framework, leading to two LNN-RFS filters. By learning continuous-time dynamics directly from data, the LNN enables the filters to adapt to complex, nonlinear motion and achieve accurate tracking of highly maneuvering objects in clutter. This hybrid approach preserves the inherent multi-object tracking strengths of the RFS framework while improving flexibility and robustness. Simulation results on challenging maneuvering scenarios demonstrate substantial gains of the proposed hybrid approach in tracking accuracy.
title Hybrid Liquid Neural Network-Random Finite Set Filtering for Robust Maneuvering Object Tracking
topic Signal Processing
url https://arxiv.org/abs/2510.25020