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Automotive Radar-Based Vehicle Tracking Using Data-Region Association

Xiaomeng Cao, Jian Lan, X. Rong Li, Yu Liu

2021IEEE Transactions on Intelligent Transportation Systems40 citationsDOI

Abstract

For automotive radar-based extended object tracking, this paper proposes a new approach, which jointly estimates the kinematic state and the extension of a vehicle. The vehicle’s shape is described as a rectangle with its vertices treated as the extension state. “Having a rectangular shape” is described as a quadratic equality constraint on the state. To deal with the challenging problem of modeling measurement (scattering center) distribution over a vehicle, we partition the rectangular area into multiple regions and assume that in each region the scattering centers have a simple distribution. An approach is proposed to associate measurements with these regions. Given an association, the target state is estimated in a linear minimum mean-square-error framework with the shape constraint treated as a pseudo measurement. The probabilities for these regions to generate measurements are updated online. The estimate is then projected into the constraint space. The effectiveness of the proposed approach is illustrated using both simulated and real data.

Topics & Concepts

RadarState vectorConstraint (computer-aided design)AlgorithmAutomotive industryKinematicsComputer scienceRadar trackerQuadratic equationPartition (number theory)MathematicsEngineeringGeometryAerospace engineeringPhysicsClassical mechanicsCombinatoricsTelecommunicationsTarget Tracking and Data Fusion in Sensor NetworksGaussian Processes and Bayesian InferenceAnomaly Detection Techniques and Applications
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