We address the issue of learning and representing object grasp affordance models. We model grasp affordances with continuous probability density functions (grasp densities) which link object-relative grasp poses to their success probability. The underlying function representation is nonparametric and relies on kernel density estimation to provide a continuous model. Grasp densities are learned and refined from exploration, by letting a robot “play” with an object in a sequence of grasp-and-drop actions: the robot uses visual cues to generate a set of grasp hypotheses, which it then executes and records their outcomes. When a satisfactory amount of grasp data is available, an importance-sampling algorithm turns it into a grasp density. We ev...
Abstract — This paper addresses the problem of learning and efficiently representing discriminative ...
This paper addresses the problem of learning and efficiently representing discriminative probabilist...
This paper addresses the problem of learning and efficiently representing discriminative probabilist...
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...
This paper addresses the issue of learning and representing object grasp affordances, i.e. object-gr...
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...
Abstract — This paper addresses the problem of learning and efficiently representing discriminative ...
This paper addresses the problem of learning and efficiently representing discriminative probabilist...
This paper addresses the problem of learning and efficiently representing discriminative probabilist...
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...
This paper addresses the issue of learning and representing object grasp affordances, i.e. object-gr...
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...
Abstract — This paper addresses the problem of learning and efficiently representing discriminative ...
This paper addresses the problem of learning and efficiently representing discriminative probabilist...
This paper addresses the problem of learning and efficiently representing discriminative probabilist...