Estimating Object Hardness with a GelSight Touch Sensor - Robotics Institute Carnegie Mellon University

Estimating Object Hardness with a GelSight Touch Sensor

Wenzhen Yuan, Mandayam A. Srinivasan, and Edward H. Adelson
Conference Paper, Proceedings of (IROS) IEEE/RSJ International Conference on Intelligent Robots and Systems, pp. 208 - 215, October, 2016

Abstract

Hardness sensing is a valuable capability for a robot touch sensor. We describe a novel method of hardness sensing that does not require accurate control of contact conditions. A GelSight sensor is a tactile sensor that provides high resolution tactile images, which enables a robot to infer object properties such as geometry and fine texture, as well as contact force and slip conditions. The sensor is pressed on silicone samples by a human or a robot and we measure the sample hardness only with data from the sensor, without a separate force sensor and without precise knowledge of the contact trajectory. We describe the features that show object hardness. For hemispherical objects, we develop a model to measure the sample hardness, and the estimation error is about 4% in the range of 8 Shore 00 to 45 Shore A. With this technology, a robot is able to more easily infer the hardness of the touched objects, thereby improving its object recognition as well as manipulation strategy.

BibTeX

@conference{Yuan-2016-119929,
author = {Wenzhen Yuan and Mandayam A. Srinivasan and Edward H. Adelson},
title = {Estimating Object Hardness with a GelSight Touch Sensor},
booktitle = {Proceedings of (IROS) IEEE/RSJ International Conference on Intelligent Robots and Systems},
year = {2016},
month = {October},
pages = {208 - 215},
}