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Self-Driving Car Location Estimation Based on a Particle-Aided Unscented Kalman Filter

Ming Lin, Jaewoo Yoon, Byeong-Woo Kim

2020Sensors36 citationsDOIOpen Access PDF

Abstract

Localization is one of the key components in the operation of self-driving cars. Owing to the noisy global positioning system (GPS) signal and multipath routing in urban environments, a novel, practical approach is needed. In this study, a sensor fusion approach for self-driving cars was developed. To localize the vehicle position, we propose a particle-aided unscented Kalman filter (PAUKF) algorithm. The unscented Kalman filter updates the vehicle state, which includes the vehicle motion model and non-Gaussian noise affection. The particle filter provides additional updated position measurement information based on an onboard sensor and a high definition (HD) map. The simulations showed that our method achieves better precision and comparable stability in localization performance compared to previous approaches.

Topics & Concepts

Kalman filterParticle filterGlobal Positioning SystemComputer scienceSensor fusionExtended Kalman filterPosition (finance)Monte Carlo localizationMultipath propagationControl theory (sociology)Computer visionArtificial intelligenceTelecommunicationsEconomicsControl (management)Channel (broadcasting)FinanceIndoor and Outdoor Localization TechnologiesRobotics and Sensor-Based LocalizationTarget Tracking and Data Fusion in Sensor Networks