2021
DOI: 10.48550/arxiv.2109.14974
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Unified Data Collection for Visual-Inertial Calibration via Deep Reinforcement Learning

Abstract: Visual-inertial sensors have a wide range of applications in robotics. However, good performance often requires different sophisticated motion routines to accurately calibrate camera intrinsics and inter-sensor extrinsics. This work presents a novel formulation to learn a motion policy to be executed on a robot arm for automatic data collection for calibrating intrinsics and extrinsics jointly. Our approach models the calibration process compactly using model-free deep reinforcement learning to derive a policy… Show more

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