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The event camera, a bio-inspired asynchronous triggered camera, offers promising prospects for fusion with framebased cameras owing to its low latency and high dynamic range.However, calibrating stereo vision systems that incorporate both event-and frame-based cameras remains a significant challenge.In this letter, we present EF-Calib, a spatiotemporal calibration framework for event-and frame-based cameras using continuoustime trajectories.A novel calibration pattern applicable to both camera types and the corresponding event recognition algorithm are proposed.Leveraging the asynchronous nature of events, a derivable piece-wise B-spline to represent camera pose continuously is introduced, enabling calibration for intrinsic parameters, extrinsic parameters, and time offset, with analytical Jacobians provided.Various experiments are carried out to evaluate the calibration performance of EF-Calib, including calibration experiments for intrinsic parameters, extrinsic parameters, and time offset.Experimental results demonstrate that EF-Calib outperforms current methods by achieving the most accurate intrinsic parameters, comparable accuracy in extrinsic parameters to frame-based method, and precise time offset estimation.EF-Calib provides a convenient and accurate toolbox for calibrating the system that fuses events and frames.The code of this paper is open-sourced at: https://github.com/wsakobe/EF-Calib.
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Shaoan Wang
Zhanhua Xin
Yaoqing Hu
IEEE Robotics and Automation Letters
Peking University
Fuzhou University
State Key Laboratory of Turbulence and Complex Systems
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Wang et al. (Thu,) studied this question.
www.synapsesocial.com/papers/68e55db1e2b3180350efb33d — DOI: https://doi.org/10.1109/lra.2024.3474475