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arxiv: 1810.02653 · v1 · pith:PWTD46WOnew · submitted 2018-10-05 · 💻 cs.RO · cs.LG

FingerVision Tactile Sensor Design and Slip Detection Using Convolutional LSTM Network

classification 💻 cs.RO cs.LG
keywords slipsensorhumantactilecameraclassificationcontactconvolutional
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Tactile sensing is essential to the human perception system, so as to robot. In this paper, we develop a novel optical-based tactile sensor "FingerVision" with effective signal processing algorithms. This sensor is composed of soft skin with embedded marker array bonded to rigid frame, and a web camera with a fisheye lens. While being excited with contact force, the camera tracks the movements of markers and deformation field is obtained. Compared to existing tactile sensors, our sensor features compact footprint, high resolution, and ease of fabrication. Besides, utilizing the deformation field estimation, we propose a slip classification framework based on convolution Long Short Term Memory (convolutional LSTM) networks. The data collection process takes advantage of the human sense of slip, during which human hand holds 12 daily objects, interacts with sensor skin and labels data with a slip or non-slip identity based on human feeling of slip. Our slip classification framework performs high accuracy of 97.62% on the test dataset. It is expected to be capable of enhancing the stability of robot grasping significantly, leading to better contact force control, finer object interaction and more active sensing manipulation.

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Cited by 2 Pith papers

Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. Effective Estimation of Contact Force and Torque for Vision-based Tactile Sensor with Helmholtz-Hodge Decomposition

    cs.RO 2019-06 unverdicted novelty 6.0

    Applies Helmholtz-Hodge Decomposition to contact deformation vector fields from hyperelastic materials to estimate surface forces and torques for vision-based tactile sensors, with experimental validation.

  2. Characterizing the Resilience and Sensitivity of Polyurethane Vision-Based Tactile Sensors

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    Polyurethane vision-based tactile sensors are more resilient to normal loading, shear, and abrasion than silicone ones, extending the usable force range at the cost of low-force sensitivity.