Method

RobMOT_Dynamic[la][on] [RobMOT_Dynamic]


Submitted on 14 May. 2025 09:21 by
Mohamed Mostafa (Khalifa University)

Running time:1 s s
Environment:1 core @ 2.5 Ghz (C/C++)

Method Description:
This work addresses the critical lack of precision
in state estimation in the Kalman filter for 3D
multi-object tracking (MOT) and the ongoing
challenge of selecting the appropriate motion
model. Existing literature commonly relies on
constant motion models for estimating the states
of objects, neglecting the complex motion dynamics
unique to each object. Consequently, trajectory
division and imprecise object localization arise,
especially under occlusion conditions. The core of
these challenges lies in the limitations of the
current Kalman filter formulation, which fails to
account for the variability of motion dynamics as
objects navigate their environments. This work
introduces a novel formulation of the Kalman
filter that incorporates motion dynamics, allowing
the motion model to adaptively adjust according to
changes in the object's movement.
Parameters:
N/A
Latex Bibtex:
@misc{nagy2025accuratestateestimationkalman,
title={Towards Accurate State Estimation:
Kalman Filter Incorporating Motion Dynamics for 3D
Multi-Object Tracking},
author={Mohamed Nagy and Naoufel Werghi and
Bilal Hassan and Jorge Dias and Majid Khonji},
year={2025},
eprint={2505.07254},
archivePrefix={arXiv},
primaryClass={cs.CV},
url={https://arxiv.org/abs/2505.07254},
}

Detailed Results

From all 29 test sequences, our benchmark computes the HOTA tracking metrics (HOTA, DetA, AssA, DetRe, DetPr, AssRe, AssPr, LocA) [1] as well as the CLEARMOT, MT/PT/ML, identity switches, and fragmentation [2,3] metrics. The tables below show all of these metrics.


Benchmark HOTA DetA AssA DetRe DetPr AssRe AssPr LocA
CAR 81.80 % 78.78 % 85.53 % 84.15 % 85.20 % 89.16 % 90.26 % 87.83 %

Benchmark TP FP FN
CAR 32657 1735 1311

Benchmark MOTA MOTP MODA IDSW sMOTA
CAR 91.11 % 86.58 % 91.14 % 13 78.36 %

Benchmark MT rate PT rate ML rate FRAG
CAR 83.39 % 6.46 % 10.15 % 72

Benchmark # Dets # Tracks
CAR 33968 612

This table as LaTeX


This figure as: png pdf

[1] J. Luiten, A. Os̆ep, P. Dendorfer, P. Torr, A. Geiger, L. Leal-Taixé, B. Leibe: HOTA: A Higher Order Metric for Evaluating Multi-object Tracking. IJCV 2020.
[2] K. Bernardin, R. Stiefelhagen: Evaluating Multiple Object Tracking Performance: The CLEAR MOT Metrics. JIVP 2008.
[3] Y. Li, C. Huang, R. Nevatia: Learning to associate: HybridBoosted multi-target tracker for crowded scene. CVPR 2009.


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