GPS-IMU Sensor Fusion for Reliable Autonomous Vehicle Position Estimation
Simegnew Yihunie Alaba

TL;DR
This paper presents a GPS-IMU sensor fusion method using Unscented Kalman Filter to improve autonomous vehicle navigation accuracy, especially in environments where GPS signals are unreliable or unavailable.
Contribution
It introduces a robust sensor fusion approach combining GPS and IMU data with UKF, validated on KITTI datasets, significantly reducing positioning errors in GPS-denied environments.
Findings
RMSE decreased significantly across all axes with sensor fusion
UKF-based fusion outperforms GPS-only navigation in accuracy
Experimental validation confirms robustness in GPS-denied scenarios
Abstract
Global Positioning System (GPS) navigation provides accurate positioning with global coverage, making it a reliable option in open areas with unobstructed sky views. However, signal degradation may occur in indoor spaces and urban canyons. In contrast, Inertial Measurement Units (IMUs) consist of gyroscopes and accelerometers that offer relative motion information such as acceleration and rotational changes. Unlike GPS, IMUs do not rely on external signals, making them useful in GPS-denied environments. Nonetheless, IMUs suffer from drift over time due to the accumulation of errors while integrating acceleration to determine velocity and position. Therefore, fusing the GPS and IMU is crucial for enhancing the reliability and precision of navigation systems in autonomous vehicles, especially in environments where GPS signals are compromised. To ensure smooth navigation and overcome the…
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Taxonomy
TopicsInertial Sensor and Navigation
MethodsGreedy Policy Search
