SMART-TRACK: A Novel Kalman Filter-Guided Sensor Fusion For Robust UAV Object Tracking in Dynamic Environments
Khaled Gabr, Mohamed Abdelkader, Imen Jarraya, Abdullah AlMusalami,, Anis Koubaa

TL;DR
This paper introduces SMART-TRACK, a sensor fusion method using Kalman Filter feedback to improve UAV object tracking robustness in dynamic environments, especially during measurement disruptions.
Contribution
The paper presents a novel Kalman Filter-guided sensor fusion approach with measurement augmentation and an open-source ROS2 implementation for robust UAV tracking.
Findings
Enhanced tracking stability with RMSE as low as 0.04 m during disruptions
Effective integration of nonlinear covariance propagation in sensor fusion
Open-source implementation validated in Gazebo simulation
Abstract
In the field of sensor fusion and state estimation for object detection and localization, ensuring accurate tracking in dynamic environments poses significant challenges. Traditional methods like the Kalman Filter (KF) often fail when measurements are intermittent, leading to rapid divergence in state estimations. To address this, we introduce SMART (Sensor Measurement Augmentation and Reacquisition Tracker), a novel approach that leverages high-frequency state estimates from the KF to guide the search for new measurements, maintaining tracking continuity even when direct measurements falter. This is crucial for dynamic environments where traditional methods struggle. Our contributions include: 1) Versatile Measurement Augmentation Using KF Feedback: We implement a versatile measurement augmentation system that serves as a backup when primary object detectors fail intermittently. This…
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Taxonomy
TopicsTarget Tracking and Data Fusion in Sensor Networks · Infrared Target Detection Methodologies · Robotics and Sensor-Based Localization
