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Color-Based Proprioception of Soft Actuators Interacting With Objects

Rob B. N. Scharff, Rens M. Doornbusch, Eugeni L. Doubrovski, Jun Wu, Jo M. P. Geraedts, Charlie C. L. Wang

Year
2019
Citations
30

Abstract

Actuators using soft materials feature a large number of degrees of freedom. This tremendous flexibility allows a soft actuator to passively adapt its shape to the objects under interaction. In this paper, we propose a novel proprioception method for soft actuators during real-time interaction with previously unknown objects. First, we design a color-based sensing structure that instantly translates the inflation of a bellow into changes in color, which are subsequently detected by a miniaturized color sensor. The color sensor is small and, thus, multiple of them can be integrated into soft pneumatic actuators to reflect local deformations. Second, we make use of a feed-forward neural network to reconstruct a multivariate global shape deformation from local color signals. Our results demonstrate that deformations of the actuator during interaction, including sigmoid-like shapes, can be accurately reconstructed. The accurate shape sensing represents a significant step toward closed-loop control of soft robots in unstructured environments.

Keywords

ActuatorArtificial intelligenceComputer scienceComputer visionFeature (linguistics)RobotSoft roboticsFlexibility (engineering)Mathematics

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