We discuss vision as a sensory modality for systems that interact flexibly with uncontrolled environments. Instead of trying to build a generic vision system that produces task-independent representations, we argue in favor of task-specific, learnable representations. This concept is illustrated by two examples of our own work. First, our RLVC algorithm performs reinforcement learning directly on the visual input space. To make this very large space manageable, RLVC interleaves the reinforcement learner with a supervised classification algorithm that seeks to split perceptual states so as to reduce perceptual aliasing. This results in an adaptive discretization of the perceptual space based on the presence or absence of visual features. Its...
Humans learn robust and efficient strategies for visual tasks through interaction with their environ...
Abstract: This paper focuses on two issues on learning and development; a problem of state-action sp...
We introduce our approach that makes a robot learn to behave adequately to accomplish a given task a...
We discuss vision as a sensory modality for systems that interact flexibly with uncontrolled environ...
We discuss vision as a sensory modality for systems that interact flexibly with uncontrolled environ...
We discuss vision as a sensory modality for systems that interact flexibly with uncontrolled environ...
We discuss vision as a sensory modality for systems that interact flexibly with uncontrolled environ...
We describe two quite different methods for associating action parameters to visual percepts. Our RL...
We describe two quite different methods for associating action parameters to visual percepts. Our RL...
We describe two quite different methods for associating action parameters to visual percepts. Our RL...
We describe two quite different methods for associating action parameters to visual percepts. Our RL...
We describe two quite different methods for associating action parameters to visual percepts. Our RL...
We introduce a new class of Reinforcement Learning algorithms designed to operate in perceptual spac...
We study learning of perception-action relations using visually-driven grasping as an example task. ...
In this paper, we consider the problem of reinforcement learning in spatial tasks. These tasks have ...
Humans learn robust and efficient strategies for visual tasks through interaction with their environ...
Abstract: This paper focuses on two issues on learning and development; a problem of state-action sp...
We introduce our approach that makes a robot learn to behave adequately to accomplish a given task a...
We discuss vision as a sensory modality for systems that interact flexibly with uncontrolled environ...
We discuss vision as a sensory modality for systems that interact flexibly with uncontrolled environ...
We discuss vision as a sensory modality for systems that interact flexibly with uncontrolled environ...
We discuss vision as a sensory modality for systems that interact flexibly with uncontrolled environ...
We describe two quite different methods for associating action parameters to visual percepts. Our RL...
We describe two quite different methods for associating action parameters to visual percepts. Our RL...
We describe two quite different methods for associating action parameters to visual percepts. Our RL...
We describe two quite different methods for associating action parameters to visual percepts. Our RL...
We describe two quite different methods for associating action parameters to visual percepts. Our RL...
We introduce a new class of Reinforcement Learning algorithms designed to operate in perceptual spac...
We study learning of perception-action relations using visually-driven grasping as an example task. ...
In this paper, we consider the problem of reinforcement learning in spatial tasks. These tasks have ...
Humans learn robust and efficient strategies for visual tasks through interaction with their environ...
Abstract: This paper focuses on two issues on learning and development; a problem of state-action sp...
We introduce our approach that makes a robot learn to behave adequately to accomplish a given task a...