Automated Recycling Separation Enabled by Soft Robotic Material Classification
Author(s)
Chin, Lillian T.; Lipton, Jeffrey I; Yuen, Michelle C.; Kramer-Bottiglio, Rebecca; Rus, Daniela L
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Single-stream recycling is currently an extremely labor intensive process due to the need for manual object sorting. Soft robotics offers a natural solution as compliant robots require less computation to plan paths and grasp objects in a cluttered environment. However, most soft robots are not robust enough to handle the many sharp objects present in a recycling facility. In this work, we present a soft sensorized robotic gripper which is fully electrically driven and can detect the difference between paper, metal and plastic. By combining handed shearing auxetics with high deformation capacitive pressure and strain sensors, we present a new puncture resistant soft robotic gripper. Our materials classifier has 85% accuracy with a stationary gripper and 63% accuracy in a simulated recycling pipeline. This classifier works over a variety of objects, including those that would fool a purely vision-based system.
Date issued
2019-05Department
Massachusetts Institute of Technology. Computer Science and Artificial Intelligence LaboratoryJournal
IEEE International Conference on Soft Robotics
Publisher
Institute of Electrical and Electronics Engineers (IEEE)
Citation
Chin, Lillian et al. "Automated Recycling Separation Enabled by Soft Robotic Material Classification." IEEE International Conference on Soft Robotics, April 2019, Seoul, South Korea, Institute of Electrical and Electronics Engineers, May 2019 © 2019 IEEE
Version: Author's final manuscript
ISBN
9781538692608