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Main Authors: Li, Yihang, Chen, Yijin, Xu, Junkai, Ningguta, Na, Shull, Peter B., Jiang, Shuo, He, Bin
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.18550
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author Li, Yihang
Chen, Yijin
Xu, Junkai
Ningguta, Na
Shull, Peter B.
Jiang, Shuo
He, Bin
author_facet Li, Yihang
Chen, Yijin
Xu, Junkai
Ningguta, Na
Shull, Peter B.
Jiang, Shuo
He, Bin
contents Vision based and event based tactile sensors are important in robotic manipulation research. However, they suffer from a fundamental tradeoff: vision based sensors have low sampling rates, while event based sensors are prone to drift during long term static force estimation. To solve this challenge and achieve human level tactile perception, the novel hybrid event frame tactile sensor (Mixtac) is proposed in this paper by emulating the synergistic function of biological mechanoreceptors, which achieves normal force estimation. The prototype leverages events for high frequency force tracking and frames for long term accuracy. The Frame Guided Event Recurrent Network (FGER-Net) was proposed to fuse the two data streams. Frames were used by the net to correct event drift during training and guide high frequency predictions during inference. Experiments demonstrated an MAE of 0.04 N. This paper could bridge the sampling rate gap from 0 to 500 Hz in current vision based tactile sensors and pave the way for human level robotic manipulation.
format Preprint
id arxiv_https___arxiv_org_abs_2605_18550
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Mixtac: A Novel Bio-Inspired Hybrid Tactile Sensor with Synergistic Event-Frame Perception
Li, Yihang
Chen, Yijin
Xu, Junkai
Ningguta, Na
Shull, Peter B.
Jiang, Shuo
He, Bin
Image and Video Processing
Vision based and event based tactile sensors are important in robotic manipulation research. However, they suffer from a fundamental tradeoff: vision based sensors have low sampling rates, while event based sensors are prone to drift during long term static force estimation. To solve this challenge and achieve human level tactile perception, the novel hybrid event frame tactile sensor (Mixtac) is proposed in this paper by emulating the synergistic function of biological mechanoreceptors, which achieves normal force estimation. The prototype leverages events for high frequency force tracking and frames for long term accuracy. The Frame Guided Event Recurrent Network (FGER-Net) was proposed to fuse the two data streams. Frames were used by the net to correct event drift during training and guide high frequency predictions during inference. Experiments demonstrated an MAE of 0.04 N. This paper could bridge the sampling rate gap from 0 to 500 Hz in current vision based tactile sensors and pave the way for human level robotic manipulation.
title Mixtac: A Novel Bio-Inspired Hybrid Tactile Sensor with Synergistic Event-Frame Perception
topic Image and Video Processing
url https://arxiv.org/abs/2605.18550