We present an architecture based on the Dynamic Field Theory for the problem of scene representation. At the core of this architecture are three-dimensional neural fields linking feature to spatial information. These three-dimensional fields are coupled to lower-dimensional fields that provide both a close link to the sensory surface and a close link to motor behavior. We highlight the updating mechanism of this architecture, both when a single object is selected and followed by the robot's head in smooth pursuit and in multi-item tracking when several items move simultaneousl
International audienceAlthough biomimetic autonomous robotics relies on the massively parallel archi...
Abstract — In this paper, we introduce a neural-dynamic architecture that enables autonomous learn-i...
A demonstration is made of a programmable vision chip, containing an array of photosensors collocate...
Based on the concepts of dynamic field theory (DFT), we present an architecture that autonomously ge...
Abstract—Based on the concepts of dynamic field theory (DFT), we present an architecture that autono...
Reaching for objects and grasping them is a fundamental skill for any autonomous robot that interact...
Abstract—A core requirement for autonomous robotic agents is that they be able to initiate actions t...
Abstract. The sensorimotor maps link the perceived states to actions, required to achieve the goals ...
We extend our previous neural dynamic models of visual search and scene memory (Grieben et al. (2020...
We propose a framework for the representation of visual knowledge in a robotic agent, with special a...
Neurally inspired robotics already has a long history that includes reactive systems emulating refle...
For self-driving vehicles, aerial drones, and autonomous robots to be successfully deployed in the r...
This tutorial presents an architecture for autonomous robots to generate behavior in joint action ta...
AbstractWe propose a framework for the representation of visual knowledge in a robotic agent, with s...
In robotics, having a 3D representation of the environment where a robot is working can be very usef...
International audienceAlthough biomimetic autonomous robotics relies on the massively parallel archi...
Abstract — In this paper, we introduce a neural-dynamic architecture that enables autonomous learn-i...
A demonstration is made of a programmable vision chip, containing an array of photosensors collocate...
Based on the concepts of dynamic field theory (DFT), we present an architecture that autonomously ge...
Abstract—Based on the concepts of dynamic field theory (DFT), we present an architecture that autono...
Reaching for objects and grasping them is a fundamental skill for any autonomous robot that interact...
Abstract—A core requirement for autonomous robotic agents is that they be able to initiate actions t...
Abstract. The sensorimotor maps link the perceived states to actions, required to achieve the goals ...
We extend our previous neural dynamic models of visual search and scene memory (Grieben et al. (2020...
We propose a framework for the representation of visual knowledge in a robotic agent, with special a...
Neurally inspired robotics already has a long history that includes reactive systems emulating refle...
For self-driving vehicles, aerial drones, and autonomous robots to be successfully deployed in the r...
This tutorial presents an architecture for autonomous robots to generate behavior in joint action ta...
AbstractWe propose a framework for the representation of visual knowledge in a robotic agent, with s...
In robotics, having a 3D representation of the environment where a robot is working can be very usef...
International audienceAlthough biomimetic autonomous robotics relies on the massively parallel archi...
Abstract — In this paper, we introduce a neural-dynamic architecture that enables autonomous learn-i...
A demonstration is made of a programmable vision chip, containing an array of photosensors collocate...