2024
DOI: 10.1007/s10846-024-02091-6
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Vision-state Fusion: Improving Deep Neural Networks for Autonomous Robotics

Elia Cereda,
Stefano Bonato,
Mirko Nava
et al.

Abstract: Vision-based deep learning perception fulfills a paramount role in robotics, facilitating solutions to many challenging scenarios, such as acrobatic maneuvers of autonomous unmanned aerial vehicles (UAVs) and robot-assisted high-precision surgery. Control-oriented end-to-end perception approaches, which directly output control variables for the robot, commonly take advantage of the robot’s state estimation as an auxiliary input. When intermediate outputs are estimated and fed to a lower-level controller, i.e.,… Show more

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