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Soft modularized robotic arm for safe human-robot interaction based on visual and proprioceptive feedback

Authors
Ku, SubyeongSong, Byung-HyunPark, TaejunLee, YounghoonPark, Yong-Lae
Issue Date
Jul-2024
Publisher
SAGE PUBLICATIONS LTD
Keywords
Soft robotics; soft actuators; soft sensors; modularized soft robotic arm; computer vision; deep learning
Citation
INTERNATIONAL JOURNAL OF ROBOTICS RESEARCH, v.43, no.8, pp 1128 - 1150
Pages
23
Journal Title
INTERNATIONAL JOURNAL OF ROBOTICS RESEARCH
Volume
43
Number
8
Start Page
1128
End Page
1150
URI
https://scholarworks.bwise.kr/gachon/handle/2020.sw.gachon/92167
DOI
10.1177/02783649241227249
ISSN
0278-3649
1741-3176
Abstract
This study proposes a modularized soft robotic arm with integrated sensing of human touches for physical human-robot interactions. The proposed robotic arm is constructed by connecting multiple soft manipulator modules, each of which consists of three bellow-type soft actuators, pneumatic valves, and an on-board sensing and control circuit. By employing stereolithography three-dimensional (3D) printing technique, the bellow actuator is capable of incorporating embedded organogel channels in the thin wall of its body that are used for detecting human touches. The organogel thus serves as a soft interface for recognizing the intentions of the human operators, enabling the robot to interact with them while generating desired motions of the manipulator. In addition to the touch sensors, each manipulator module has compact, soft string sensors for detecting the displacements of the bellow actuators. When combined with an inertial measurement unit (IMU), the manipulator module has a capability of estimating its own pose or orientation internally. We also propose a localization method that allows us to estimate the location of the manipulator module and to acquire the 3D information of the target point in an uncontrolled environment. The proposed method uses only a single depth camera combined with a deep learning model and is thus much simpler than those of conventional motion capture systems that usually require multiple cameras in a controlled environment. Using the feedback information from the internal sensors and camera, we implemented closed-loop control algorithms to carry out tasks of reaching and grasping objects. The manipulator module shows structural robustness and the performance reliability over 5,000 cycles of repeated actuation. It shows a steady-state error and a standard deviation of 0.8 mm and 0.3 mm, respectively, using the proposed localization method and the string sensor data. We demonstrate an application example of human-robot interaction that uses human touches as triggers to pick up and manipulate target objects. The proposed soft robotic arm can be easily installed in a variety of human workspaces, since it has the ability to interact safely with humans, eliminating the need for strict control of the environments for visual perception. We believe that the proposed system has the potential to integrate soft robots into our daily lives.
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