Autoencoding a Soft Touch to Learn Grasping from On-Land to Underwater

ADVANCED INTELLIGENT SYSTEMS(2024)

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摘要
Robots play a critical role as the physical agent of human operators in exploring the ocean. However, it remains challenging to grasp objects reliably while fully submerging under a highly pressurized aquatic environment with little visible light, mainly due to the fluidic interference on the tactile mechanics between the finger and object surfaces. This study investigates the transferability of grasping knowledge from on-land to underwater via a vision-based soft robotic finger that learns 6D forces and torques (FT) using a supervised variational autoencoder (SVAE). A high-framerate camera captures the whole-body deformations while a soft robotic finger interacts with physical objects on-land and underwater. Results show that the trained SVAE model learns a series of latent representations of the soft mechanics transferable from land to water, presenting a superior adaptation to the changing environments against commercial FT sensors. Soft, delicate, and reactive grasping enabled by tactile intelligence enhances the gripper's underwater interaction with improved reliability and robustness at a much-reduced cost, paving the path for learning-based intelligent grasping to support fundamental scientific discoveries in environmental and ocean research. A soft robotic finger with in-finger vision capable of transferring grasping knowledge from on-land to underwater by learning 6D forces and torques using a supervised variational autoencoder is presented, resulting in a learning-based approach to introduce tactile intelligence for soft, delicate, and reactive grasping underwater, making it a promising solution that supports scientific discoveries in interdisciplinary research.image (c) 2023 WILEY-VCH GmbH
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关键词
soft robotics,tactile learning,underwater grasping
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