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A convolutional neural network based electrical impedance tomography method for skin-like hydrogel sensing

Haofeng Chen, Xuanxuan Yang, Jialu Geng, Gang Ma, Xiaojie Wang

Year
2022
Citations
4

Abstract

The technique of electrical impedance tomography (EIT) offers significant benefits in designing large-area and flex-ible tactile sensors for robotic skin because it allows using only a small number of electrodes and simple structures without any internal wires. However, the poor-quality reconstruction images remain a great challenge for its application. In this paper, we presented a convolution neural network based EIT reconstruction algorithm (EIT-CNN) to improve the reconstruction quality of EIT-based tactile sensing. To verify the proposed algorithm, we conducted one-point numerical simulations. The simulation results showed that the proposed method can achieve better performance in effectively eliminating image artifacts and noise. Further, we performed a realistic multi-point experiment on a skin-like hydrogel tactile sensor. The results show the excellent generalization of the method and the potential for force strength detection.

Keywords

Electrical impedance tomographyComputer scienceConvolutional neural networkConvolution (computer science)Iterative reconstructionNoise (video)Electrical impedanceArtificial intelligenceTactile sensorComputer vision

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