Claudio Coppola
Claudio Coppola
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Dexterous-Manipulation
Discovering stable robot grasps for unknown objects in presence of uncertainty using bayesian models
The paper presents a pipeline to predict safe robotic grasps of unknown objects using depth and tactile sensing. Three methods are compared to find optimal grasp points during tactile exploration - grid search, standard Bayesian Optimization, and Unscented Bayesian Optimization. Results show Unscented Bayesian Optimization provides higher confidence in discovering safe grasps with fewer exploratory observations. It converges faster to robust grasp points away from edges compared to other methods.
Muhammad Sami Siddiqui
,
Claudio Coppola
,
Gökhan Solak
,
Lorenzo Jamone
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Grasp stability prediction for a dexterous robotic hand combining depth vision and haptic bayesian exploration
The paper presents an approach using depth sensing and tactile feedback to predict safe robotic grasps of completely unknown objects through haptic exploration and comparing grid search, standard Bayesian Optimization, and unscented Bayesian Optimization, with results showing unscented Bayesian Optimization provides higher confidence grasps with fewer exploratory observations.
Muhammad Sami Siddiqui
,
Claudio Coppola
,
Gökhan Solak
,
Lorenzo Jamone
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