Aggressive Aerial Grasping using a Soft Drone with Onboard Perception
Samuel Ubellacker, Aaron Ray, James Bern, Jared Strader, Luca Carlone

TL;DR
This paper introduces a soft drone with onboard perception and a novel soft gripper, enabling aggressive, fast, and versatile aerial grasping of various objects in indoor and outdoor environments at high speeds.
Contribution
It presents the first onboard perception system combined with a soft manipulator for robust, high-speed aerial grasping, overcoming limitations of rigid manipulators and external tracking systems.
Findings
Achieved up to 2.0 m/s grasping speed, the fastest vision-based aerial grasp reported.
Demonstrated successful grasping of diverse objects in varied environments.
Enabled motion-capture-based grasping of moving targets at 0.3 m/s.
Abstract
Contrary to the stunning feats observed in birds of prey, aerial manipulation and grasping with flying robots still lack versatility and agility. Conventional approaches using rigid manipulators require precise positioning and are subject to large reaction forces at grasp, which limit performance at high speeds. The few reported examples of aggressive aerial grasping rely on motion capture systems, or fail to generalize across environments and grasp targets. We describe the first example of a soft aerial manipulator equipped with a fully onboard perception pipeline, capable of robustly localizing and grasping visually and morphologically varied objects. The proposed system features a novel passively closing tendon-actuated soft gripper that enables fast closure at grasp, while compensating for position errors, complying to the target-object morphology, and dampening reaction forces. The…
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Taxonomy
TopicsRobot Manipulation and Learning · Soft Robotics and Applications · Robotics and Sensor-Based Localization
