TasksSotADatasetsPapersMethodsSubmitAbout
Papers With Code 2

A community resource for machine learning research: papers, code, benchmarks, and state-of-the-art results.

Explore

Notable BenchmarksAll SotADatasetsPapersMethods

Community

Submit ResultsAbout

Data sourced from the PWC Archive (CC-BY-SA 4.0). Built by the community, for the community.

Papers/Towards Accurate State Estimation: Kalman Filter Incorpora...

Towards Accurate State Estimation: Kalman Filter Incorporating Motion Dynamics for 3D Multi-Object Tracking

Mohamed Nagy, Naoufel Werghi, Bilal Hassan, Jorge Dias, Majid Khonji

2025-05-12NavigateMulti-Object TrackingObject LocalizationObject TrackingMultiple Object Tracking3D Multi-Object TrackingTrajectory Prediction
PaperPDF

Abstract

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. The proposed Kalman filter substantially improves state estimation, localization, and trajectory prediction compared to the traditional Kalman filter. This is reflected in tracking performance that surpasses recent benchmarks on the KITTI and Waymo Open Datasets, with margins of 0.56\% and 0.81\% in higher order tracking accuracy (HOTA) and multi-object tracking accuracy (MOTA), respectively. Furthermore, the proposed Kalman filter consistently outperforms the baseline across various detectors. Additionally, it shows an enhanced capability in managing long occlusions compared to the baseline Kalman filter, achieving margins of 1.22\% in higher order tracking accuracy (HOTA) and 1.55\% in multi-object tracking accuracy (MOTA) on the KITTI dataset. The formulation's efficiency is evident, with an additional processing time of only approximately 0.078 ms per frame, ensuring its applicability in real-time applications.

Results

TaskDatasetMetricValueModel
VideoKITTI Test (Online Methods)HOTA81.8RobMOT (Dynamic)
VideoKITTI Test (Online Methods)IDSW13RobMOT (Dynamic)
VideoKITTI Test (Online Methods)MOTA91.11RobMOT (Dynamic)
Object TrackingKITTI Test (Online Methods)HOTA81.8RobMOT (Dynamic)
Object TrackingKITTI Test (Online Methods)IDSW13RobMOT (Dynamic)
Object TrackingKITTI Test (Online Methods)MOTA91.11RobMOT (Dynamic)
Multiple Object TrackingKITTI Test (Online Methods)HOTA81.8RobMOT (Dynamic)
Multiple Object TrackingKITTI Test (Online Methods)IDSW13RobMOT (Dynamic)
Multiple Object TrackingKITTI Test (Online Methods)MOTA91.11RobMOT (Dynamic)

Related Papers

Multi-Strategy Improved Snake Optimizer Accelerated CNN-LSTM-Attention-Adaboost for Trajectory Prediction2025-07-21MVA 2025 Small Multi-Object Tracking for Spotting Birds Challenge: Dataset, Methods, and Results2025-07-17Vision-based Perception for Autonomous Vehicles in Obstacle Avoidance Scenarios2025-07-16YOLOv8-SMOT: An Efficient and Robust Framework for Real-Time Small Object Tracking via Slice-Assisted Training and Adaptive Association2025-07-16CogDDN: A Cognitive Demand-Driven Navigation with Decision Optimization and Dual-Process Thinking2025-07-15Privacy-Preserving Multi-Stage Fall Detection Framework with Semi-supervised Federated Learning and Robotic Vision Confirmation2025-07-14Automating MD simulations for Proteins using Large language Models: NAMD-Agent2025-07-10HiM2SAM: Enhancing SAM2 with Hierarchical Motion Estimation and Memory Optimization towards Long-term Tracking2025-07-10