Graph-Structured Super-Resolution for Geometry- Generalized Tomographic Tactile Sensing: Application to Humanoid Faces
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초록

Electrical impedance tomographic (EIT) tactile sensing holds great promise for whole-body coverage of contact-rich robotic systems, offering extensive flexibility in sensor geometry. However, low spatial resolution restricts its practical use, despite the existing deep-learning-based reconstruction methods. This study introduces EIT-GNN, a graph-structured data-driven EIT reconstruction framework that achieves super-resolution in large-area tactile perception on unbounded form factors of robots. EIT-GNN represents the arbitrary sensor shape into mesh connections, then employs a twofold architecture of transformer encoder and graph convolutional neural network to best manage such the geometrical prior knowledge, resulting in the accurate, generalized, and parameter-efficient reconstruction procedure. As a proof-of-concept, we demonstrate its application using large-area face-shaped sensor hardware, which represents one of the most complex geometries in human/humanoid anatomy. An extensive set of experiments, including simulation study, ablation analysis, single-touch indentation test, and latent feature analysis, confirm its superiority over alternative models. The beneficial features of the approach are demonstrated through its application in active tactile-servo control of humanoid head motion, paving the new way for integrating tactile sensors with intricate designs into robotic systems.

키워드

GeometrySensorsTactile sensorsImage reconstructionElectrical impedance tomographyRobotsShapeHardwareFacesCalibrationDeep learning in robotics and automationforce and tactile sensingsensor-based controltomographic reconstructionELECTRICAL-IMPEDANCE TOMOGRAPHYIMAGE-RECONSTRUCTIONROBOTIC SKINEITSENSORSOFT
제목
Graph-Structured Super-Resolution for Geometry- Generalized Tomographic Tactile Sensing: Application to Humanoid Faces
저자
Park, HyunkyuKim, WoojongJeon, SanghaNa, YoungjinKim, Jung
DOI
10.1109/TRO.2024.3508395
발행일
2024-11
유형
Article
저널명
IEEE Transactions on Robotics
41
페이지
558 ~ 572