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Automated Static Camera Calibration with Intelligent Vehicles

2023 IEEE Intelligent Vehicles Symposium (IV)(2023)

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摘要
Connected and cooperative driving requires precise calibration of the roadside infrastructure for having a reliable perception system. To solve this requirement in an automated manner, we present a robust extrinsic calibration method for automated geo-referenced camera calibration. Our method requires a calibration vehicle equipped with a combined GNSS/RTK receiver and an inertial measurement unit (IMU) for self-localization. In order to remove any requirements for the target's appearance and the local traffic conditions, we propose a novel approach using hypothesis filtering. Our method does not require any human interaction with the information recorded by both the infrastructure and the vehicle. Furthermore, we do not limit road access for other road users during calibration. We demonstrate the feasibility and accuracy of our approach by evaluating our approach on synthetic datasets as well as a real-world connected intersection, and deploying the calibration on real infrastructure. Our source code is publicly available(1).
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关键词
automated geo-referenced camera calibration,automated manner,calibration vehicle,connected driving,cooperative driving,inertial measurement unit,local traffic conditions,precise calibration,real-world connected intersection,reliable perception system,roadside infrastructure,robust extrinsic calibration method,static camera calibration,target
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