Data-efficient Tactile Sensing with Electrical Impedance Tomography
Electrical Impedance Tomography (EIT)-inspired tactile sensors are gaining attention in robotic tactile sensing due to their cost-effectiveness, safety, and scalability with sparse electrode configurations. This paper presents a data augmentation strategy for learning-based tactile reconstruction th...
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Zusammenfassung: | Electrical Impedance Tomography (EIT)-inspired tactile sensors are gaining
attention in robotic tactile sensing due to their cost-effectiveness, safety,
and scalability with sparse electrode configurations. This paper presents a
data augmentation strategy for learning-based tactile reconstruction that
amplifies the original single-frame signal measurement into 32 distinct,
effective signal data for training. This approach supplements uncollected
conditions of position information, resulting in more accurate and
high-resolution tactile reconstructions. Data augmentation for EIT
significantly reduces the required EIT measurements and achieves promising
performance with even limited samples. Simulation results show that the
proposed method improves the correlation coefficient by over 12% and reduces
the relative error by over 21% under various noise levels. Furthermore, we
demonstrate that a standard deep neural network (DNN) utilizing the proposed
data augmentation reduces the required data down to 1/31 while achieving a
similar tactile reconstruction quality. Real-world tests further validate the
approach's effectiveness on a flexible EIT-based tactile sensor. These results
could help address the challenge of training tactile sensing networks with
limited available measurements, improving the accuracy and applicability of
EIT-based tactile sensing systems. |
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DOI: | 10.48550/arxiv.2411.12658 |