Learning grasp stability with tactile data and HMMs
Paper i proceeding, 2010

In this paper, the problem of learning grasp stability in robotic object grasping based on tactile measurements is studied. Although grasp stability modeling and estimation has been studied for a long time, there are few robots today able of demonstrating extensive grasping skills. The main contribution of the work presented here is an investigation of probabilistic modeling for inferring grasp stability based on learning from examples. The main objective is classification of a grasp as stable or unstable before applying further actions on it, e.g. lifting. The problem cannot be solved by visual sensing which is typically used to execute an initial robot hand positioning with respect to the object. The output of the classification system can trigger a regrasping step if an unstable grasp is identified. An off-line learning process is implemented and used for reasoning about grasp stability for a three-fingered robotic hand using Hidden Markov models. To evaluate the proposed method, experiments are performed both in simulation and on a real robot system.

Tactile sensors

Stability analysis



Hidden Markov models


Yasemin Bekiroglu

Chalmers, Signaler och system, System- och reglerteknik, Reglerteknik

Ville Kyrki

Kungliga Tekniska Högskolan (KTH)

Danica Kragic

Kungliga Tekniska Högskolan (KTH)

IEEE International Symposium on Robot and Human Interactive Communication

1944-9445 (ISSN) 1944-9437 (eISSN)

IEEE International Symposium on Robot and Human Interactive Communication
Viareggio, ,


Robotteknik och automation

Datorseende och robotik (autonoma system)

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