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Is it feasible to perform training for grasping objects by preparing hundreds of supervised trajectories? The objects are very light and bit elastic. Movements are kind of slow. |
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Performing high number of repetitive experiments on the grasp is perfectly doable. We did it for our tests on However, in order to preserve the integrity of the tendons throughout the long sessions and prevent the effect of slackness and friction, it is crucial to ensure that the force exerted by the fingers on the objects remain under control. To this end, two pathways can be pursued:
While (1) can be tedious and intrinsically prone to errors, (2) turns to be quite effective and safe. We have already designed and developed software to implement (2). Relevant API are exposed in the perceptiveModels library, whose online documentation can be browsed here. Two categories of feedback are considered therein: (a) the tactile feedback retrieved from the fingertips and (b) the elastic feedback provided by the springs in the distal joints of the fingers. In this respect, you might find useful to look at |
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Other (simpler) examples are also: |
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Performing high number of repetitive experiments on the grasp is perfectly doable. We did it for our tests on
power-grasp
, for example.However, in order to preserve the integrity of the tendons throughout the long sessions and prevent the effect of slackness and friction, it is crucial to ensure that the force exerted by the fingers on the objects remain under control.
To this end, two pathways can be pursued: