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SemCal: Semantic LiDAR-Camera Calibration using Neural Mutual Information Estimator
33
Citations
29
References
2021
Year
Unknown Venue
EngineeringMachine LearningPoint Cloud ProcessingDepth MapPoint CloudExtrinsic Calibration AlgorithmImage AnalysisSemantic InformationData ScienceCalibrationCamera CalibrationRobot LearningSensor FusionMachine VisionComputer ScienceDeep LearningComputer Vision3D VisionSemantic Lidar-camera CalibrationMutual InformationMulti-view Geometry
This paper proposes SemCal: an automatic, tar-getless, extrinsic calibration algorithm for a LiDAR and camera system using semantic information. We leverage a neural information estimator to estimate the mutual information (MI) of semantic information extracted from each sensor measurement, facilitating semantic-level data association. By using a matrix exponential formulation of the se(3) transformation and a kernel-based sampling method to sample from camera measurement based on LiDAR projected points, we can formulate the LiDAR-Camera calibration problem as a novel differentiable objective function that supports gradient-based optimization methods. We also introduce a semantic-based initial calibration method using 2D MI-based image registration and Perspective-n-Point (PnP) solver. To evaluate performance, we demonstrate the robustness of our method and quantitatively analyze the accuracy using a synthetic dataset. We also evaluate our algorithm qualitatively on an urban dataset (KITTI360) and an off-road dataset (RELLIS-3D) benchmark datasets using both hand-annotated ground truth labels as well as labels predicted by the state-of-the-art deep learning models, showing improvement over recent comparable calibration approaches.
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