AuraSense: Robot Collision Avoidance by Full Surface Proximity Detection
- URL: http://arxiv.org/abs/2108.04867v1
- Date: Tue, 10 Aug 2021 18:37:54 GMT
- Title: AuraSense: Robot Collision Avoidance by Full Surface Proximity Detection
- Authors: Xiaoran Fan, Riley Simmons-Edler, Daewon Lee, Larry Jackel, Richard
Howard, Daniel Lee
- Abstract summary: AuraSense is the first system to realize no-dead-spot proximity sensing for robot arms.
It requires only a single pair of piezoelectric transducers, and can easily be applied to off-the-shelf robots.
- Score: 3.9770080498150224
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Perceiving obstacles and avoiding collisions is fundamental to the safe
operation of a robot system, particularly when the robot must operate in highly
dynamic human environments. Proximity detection using on-robot sensors can be
used to avoid or mitigate impending collisions. However, existing proximity
sensing methods are orientation and placement dependent, resulting in blind
spots even with large numbers of sensors. In this paper, we introduce the
phenomenon of the Leaky Surface Wave (LSW), a novel sensing modality, and
present AuraSense, a proximity detection system using the LSW. AuraSense is the
first system to realize no-dead-spot proximity sensing for robot arms. It
requires only a single pair of piezoelectric transducers, and can easily be
applied to off-the-shelf robots with minimal modifications. We further
introduce a set of signal processing techniques and a lightweight neural
network to address the unique challenges in using the LSW for proximity
sensing. Finally, we demonstrate a prototype system consisting of a single
piezoelectric element pair on a robot manipulator, which validates our design.
We conducted several micro benchmark experiments and performed more than 2000
on-robot proximity detection trials with various potential robot arm materials,
colliding objects, approach patterns, and robot movement patterns. AuraSense
achieves 100% and 95.3% true positive proximity detection rates when the arm
approaches static and mobile obstacles respectively, with a true negative rate
over 99%, showing the real-world viability of this system.
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