This paper addresses the problem of learning and efficiently representing discriminative probabilistic models of object-specific grasp affordances particularly when the number of labeled grasps is extremely limited. The proposed method does not require an explicit 3D model but rather learns an implicit manifold on which it defines a probability distribution over grasp affordances. We obtain hypothetical grasp configurations from visual descriptors that are associated with the contours of an object. While these hypothetical configurations are abundant, labeled configurations are very scarce as these are acquired via time-costly experiments carried out by the robot. Kernel logistic regression (KLR) via joint kernel maps is trained to map the ...
We develop means of learning and representing object grasp affordances probabilistically. By grasp a...
Abstract — We present a method for learning object grasp affordance models in 3D from experience, an...
This paper addresses the issue of learning and representing object grasp affordances, i.e. object-gr...
This paper addresses the problem of learning and efficiently representing discriminative probabilist...
Abstract — This paper addresses the problem of learning and efficiently representing discriminative ...
Abstract — This paper addresses the problem of learning and efficiently representing discriminative ...
We address the issue of learning and representing object grasp affordance models. We model grasp aff...
We address the issue of learning and representing object grasp affordance models. We model grasp aff...
We address the issue of learning and representing object grasp affordance models. We model grasp aff...
We address the issue of learning and representing object grasp affordance models. We model grasp aff...
We address the issue of learning and representing object grasp affordance models. We model grasp aff...
We address the issue of learning and representing object grasp affordance models. We model grasp aff...
We address the issue of learning and representing object grasp affordance models. We model grasp aff...
We develop means of learning and representing object grasp affordances probabilistically. By grasp a...
We develop means of learning and representing object grasp affordances probabilistically. By grasp a...
We develop means of learning and representing object grasp affordances probabilistically. By grasp a...
Abstract — We present a method for learning object grasp affordance models in 3D from experience, an...
This paper addresses the issue of learning and representing object grasp affordances, i.e. object-gr...
This paper addresses the problem of learning and efficiently representing discriminative probabilist...
Abstract — This paper addresses the problem of learning and efficiently representing discriminative ...
Abstract — This paper addresses the problem of learning and efficiently representing discriminative ...
We address the issue of learning and representing object grasp affordance models. We model grasp aff...
We address the issue of learning and representing object grasp affordance models. We model grasp aff...
We address the issue of learning and representing object grasp affordance models. We model grasp aff...
We address the issue of learning and representing object grasp affordance models. We model grasp aff...
We address the issue of learning and representing object grasp affordance models. We model grasp aff...
We address the issue of learning and representing object grasp affordance models. We model grasp aff...
We address the issue of learning and representing object grasp affordance models. We model grasp aff...
We develop means of learning and representing object grasp affordances probabilistically. By grasp a...
We develop means of learning and representing object grasp affordances probabilistically. By grasp a...
We develop means of learning and representing object grasp affordances probabilistically. By grasp a...
Abstract — We present a method for learning object grasp affordance models in 3D from experience, an...
This paper addresses the issue of learning and representing object grasp affordances, i.e. object-gr...