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An Online Automatic Calibration Method for Infrastructure-Based LiDAR-Camera Via Cross-Modal Object Matching

tao wang, Yuesheng He, Hanyang Zhuang, Ming Yang

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Abstract

In indoor environments where the Global Naviga- tion Satellite System (GNSS) isn’t available, the infrastructure- based LiDAR-camera joint array can provide high-precision lo- calization for mobile robots, such as Autonomous Valet Parking (AVP). The primary challenge in employing the infrastructure- based LiDAR-camera joint array is the extrinsic calibration between the LiDAR and the camera. Moreover, to handle interference deviation caused by vibrations or inadequate mounting stiffness during operation, the calibration’s extrinsic parameters must be automatically updated online, present- ing higher demands for infrastructure-based LiDAR-camera extrinsic calibration. This paper proposes an infrastructure LiDAR-camera online automatic calibration method based on prior knowledge of cross-modal target registration. This method requires no manual targets and initial pose guesses and can achieve extrinsic calibration. The object-prior model based on a lightweight object detection algorithm can rapidly detect scenes favorable for extrinsic calibration in sub-images of camera images. This creates favorable conditions for the registration of cross-modal networks and poses optimization of the LiDAR camera. Additionally, because a lightweight algorithm is used, the process does not compromise efficiency or consume excessive computational resources. Experimental results demonstrate that the proposed calibration method is suitable for calibrating infrastructure-based LiDAR-camera, with comparable accuracy and the ability to perform online calibration. Comparative experiments also show that the object- prior model can indeed select better scenes for LiDAR-camera extrinsic calibration, thus improving the accuracy and stability of extrinsic calibration to some extent.

Index terms

Sensor Networks Sensor Fusion Intelligent Transportation Systems