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Main Authors: Chen, Haofeng, Himmel, Bedrich, Li, Bin, Wang, Xiaojie, Hoffmann, Matej
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2503.13048
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author Chen, Haofeng
Himmel, Bedrich
Li, Bin
Wang, Xiaojie
Hoffmann, Matej
author_facet Chen, Haofeng
Himmel, Bedrich
Li, Bin
Wang, Xiaojie
Hoffmann, Matej
contents Electrical Impedance Tomography (EIT) offers a promising solution for distributed tactile sensing with minimal wiring and full-surface coverage in robotic applications. However, EIT-based tactile sensors face significant challenges during surface bending. Deformation alters the baseline impedance distribution and couples with touch-induced conductivity variations, complicating signal interpretation. To address this challenge, we present a novel sensing framework that integrates a deep neural network for interaction state classification with a dynamic adaptive reference strategy to decouple touch and deformation signals, while a data-driven regression model translates EIT voltage changes into continuous bending angles. The framework is validated using a magnetic hydrogel composite sensor that conforms to bendable surfaces. Experimental evaluations demonstrate that the proposed framework achieves precise and robust bending angle estimation, high accuracy in distinguishing touch, bending, and idle states, and significantly improves touch localization quality under bending deformation compared to conventional fixed-reference methods. Real-time experiments confirm the system's capability to reliably detect multi-touch interactions and track bending angles across varying deformation conditions. This work paves the way for flexible EIT-based robotic skins capable of rich multimodal sensing in robotics and human-robot interaction.
format Preprint
id arxiv_https___arxiv_org_abs_2503_13048
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Multi-Touch and Bending Perception Using Electrical Impedance Tomography for Robotics
Chen, Haofeng
Himmel, Bedrich
Li, Bin
Wang, Xiaojie
Hoffmann, Matej
Robotics
Electrical Impedance Tomography (EIT) offers a promising solution for distributed tactile sensing with minimal wiring and full-surface coverage in robotic applications. However, EIT-based tactile sensors face significant challenges during surface bending. Deformation alters the baseline impedance distribution and couples with touch-induced conductivity variations, complicating signal interpretation. To address this challenge, we present a novel sensing framework that integrates a deep neural network for interaction state classification with a dynamic adaptive reference strategy to decouple touch and deformation signals, while a data-driven regression model translates EIT voltage changes into continuous bending angles. The framework is validated using a magnetic hydrogel composite sensor that conforms to bendable surfaces. Experimental evaluations demonstrate that the proposed framework achieves precise and robust bending angle estimation, high accuracy in distinguishing touch, bending, and idle states, and significantly improves touch localization quality under bending deformation compared to conventional fixed-reference methods. Real-time experiments confirm the system's capability to reliably detect multi-touch interactions and track bending angles across varying deformation conditions. This work paves the way for flexible EIT-based robotic skins capable of rich multimodal sensing in robotics and human-robot interaction.
title Multi-Touch and Bending Perception Using Electrical Impedance Tomography for Robotics
topic Robotics
url https://arxiv.org/abs/2503.13048