Publication | Closed Access
Tightly-coupled GNSS-aided Visual-Inertial Localization
33
Citations
34
References
2022
Year
Raw Gnss MeasurementsEngineeringLocation EstimationGlobal Navigation Satellite SystemLocalizationCalibrationKinematicsDoppler Frequency ShiftGeodesyAutomatic NavigationInertial SensorsSynthetic Aperture RadarGeographySatellite Navigation SystemsRadarOdometryAerospace EngineeringGlobal Gnss InformationEye TrackingRemote SensingGlobal Satellite Navigation Systems
A navigation system which can output drift-free global trajectory estimation with local consistency holds great potential for autonomous vehicles and mobile devices. We propose a tightly-coupled GNSS-aided visual-inertial navigation system (GAINS) which is able to leverage the complementary sensing modality from a visual-inertial sensing pair, which provides high-frequency local information, and a Global Navigation Satellite System (GNSS) receiver with low-frequency global observations. Specifically, the raw GNSS measurements (including pseudorange, carrier phase changes, and Doppler frequency shift) are carefully leveraged and tightly fused within a visual-inertial framework. The proposed GAINS can accurately model the raw measurement uncertainties by canceling the atmospheric effects (e.g., ionospheric and tropospheric delays) which requires no prior model information. A robust state initialization procedure is presented to facilitate the fusion of global GNSS information with local visual-inertial odometry, and the spatiotemporal calibration between IMU-GNSS are also optimized in the estimator. The proposed GAINS is evaluated on extensive Monte-Carlo simulations on a trajectory generated from a large-scale urban driving dataset with specific verification for each component (i.e., online calibration and system initialization). GAINS also demonstrates competitive performance against existing state-of-the-art methods on a publicly available dataset with ground truth.
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