RODec 11, 2020

A Vision-based Sensing Approach for a Spherical Soft Robotic Arm

arXiv:2012.06413v11 citations
AI Analysis

This research addresses the critical need for proprioceptive sensing in soft robotic systems, enabling their deployment outside of laboratory environments where external sensing is unavailable.

This paper presents a vision-based sensing approach for a spherical soft robotic arm made from fabric. By integrating cameras into each of the three bellow actuators, the system can predict the arm's two rotational degrees of freedom with an accuracy of about one degree in real-time using a convolutional neural network.

Sensory feedback is essential for the control of soft robotic systems and to enable deployment in a variety of different tasks. Proprioception refers to sensing the robot's own state and is of crucial importance in order to deploy soft robotic systems outside of laboratory environments, i.e. where no external sensing, such as motion capture systems, is available. A vision-based sensing approach for a soft robotic arm made from fabric is presented, leveraging the high-resolution sensory feedback provided by cameras. No mechanical interaction between the sensor and the soft structure is required and consequently, the compliance of the soft system is preserved. The integration of a camera into an inflatable, fabric-based bellow actuator is discussed. Three actuators, each featuring an integrated camera, are used to control the spherical robotic arm and simultaneously provide sensory feedback of the two rotational degrees of freedom. A convolutional neural network architecture predicts the two angles describing the robot's orientation from the camera images. Ground truth data is provided by a motion capture system during the training phase of the supervised learning approach and its evaluation thereafter. The camera-based sensing approach is able to provide estimates of the orientation in real-time with an accuracy of about one degree. The reliability of the sensing approach is demonstrated by using the sensory feedback to control the orientation of the robotic arm in closed-loop.

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