Harnessing Deep Learning of Point Clouds for Inverse Control of 3D Shape Morphing
Jue Wang, Dhirodaatto Sarkar, Jiaqi Suo, Alex Chortos

TL;DR
This paper introduces SMNet, a deep learning approach that maps point cloud configurations to control inputs, enabling precise 3D shape morphing in soft robotics.
Contribution
It presents the first use of point cloud data and deep learning for inverse control of 3D shape morphing devices, significantly improving control accuracy.
Findings
Control accuracy improved from 82.23% to 97.68%.
SMNet is applicable to various actuator mechanisms.
Successful reproduction of target 3D shapes demonstrated.
Abstract
Shape-morphing devices, a crucial branch in soft robotics, hold significant application value in areas like human-machine interfaces, biomimetic robotics, and tools for interacting with biological systems. To achieve three-dimensional (3D) programmable shape morphing (PSM), the deployment of array-based actuators is essential. However, a critical knowledge gap impeding the development of 3D PSM is the challenge of controlling the complex systems formed by these soft actuator arrays. This study introduces a novel approach, for the first time, representing the configuration of shape morphing devices using point cloud data and employing deep learning to map these configurations to control inputs. We propose Shape Morphing Net (SMNet), a method that realizes the regression from point cloud data to high-dimensional continuous vectors. Applied to previous 2D PSM actuator arrays, SMNet…
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Taxonomy
Topics3D Shape Modeling and Analysis · Advanced Vision and Imaging · Advanced Numerical Analysis Techniques
