Tactile Regrasp: Grasp Adjustments via Simulated Tactile Transformations
IROS 2018 This paper presents a novel regrasp control policy that makes use of tactile sensing to plan local grasp adjustments. Our approach determines regrasp actions by virtually searching for local transformations of tactile measurements that improve the quality of the grasp. First, we construct...
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Zusammenfassung: | IROS 2018 This paper presents a novel regrasp control policy that makes use of tactile
sensing to plan local grasp adjustments. Our approach determines regrasp
actions by virtually searching for local transformations of tactile
measurements that improve the quality of the grasp. First, we construct a
tactile-based grasp quality metric using a deep convolutional neural network
trained on over 2800 grasps. The quality of each grasp, a continuous value
between 0 and 1, is determined experimentally by measuring its resistance to
external perturbations. Second, we simulate the tactile imprints associated
with robot motions relative to the initial grasp by performing rigid-body
transformations of the given tactile measurements. The newly generated tactile
imprints are evaluated with the learned grasp quality network and the regrasp
action is chosen to maximize the grasp quality.
Results show that the grasp quality network can predict the outcome of grasps
with an average accuracy of 85% on known objects and 75% on a cross validation
set of 12 objects. The regrasp control policy improves the success rate of
grasp actions by an average relative increase of 70% on a test set of 8
objects. |
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DOI: | 10.48550/arxiv.1803.01940 |