ROAIApr 7, 2022

DeepXPalm: Tilt and Position Rendering using Palm-worn Haptic Display and CNN-based Tactile Pattern Recognition

arXiv:2204.03521v16 citationsh-index: 24
Originality Incremental advance
AI Analysis

This addresses the need for precise haptic feedback in telemanipulation tasks, such as handling plastic pipettes, but is incremental as it builds on existing haptic and CNN methods.

The paper tackled the problem of ambiguous perception in telemanipulation of deformable objects by developing a system that uses a CNN to detect tilt and position, increasing user recognition accuracy from 9.67% to 82.5%.

Telemanipulation of deformable objects requires high precision and dexterity from the users, which can be increased by kinesthetic and tactile feedback. However, the object shape can change dynamically, causing ambiguous perception of its alignment and hence errors in the robot positioning. Therefore, the tilt angle and position classification problem has to be solved to present a clear tactile pattern to the user. This work presents a telemanipulation system for plastic pipettes consisting of a multi-contact haptic device LinkGlide to deliver haptic feedback at the users' palm and two tactile sensors array embedded in the 2-finger Robotiq gripper. We propose a novel approach based on Convolutional Neural Networks (CNN) to detect the tilt and position while grasping deformable objects. The CNN generates a mask based on recognized tilt and position data to render further multi-contact tactile stimuli provided to the user during the telemanipulation. The study has shown that using the CNN algorithm and the preset mask, tilt, and position recognition by users is increased from 9.67% using the direct data to 82.5%.

Foundations

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