Learning Representations of Spatial Displacement through Sensorimotor Prediction

05/16/2018
by   Michael Garcia Ortiz, et al.
0

Robots act in their environment through sequences of continuous motor commands. Because of the dimensionality of the motor space, as well as the infinite possible combinations of successive motor commands, agents need compact representations that capture the structure of the resulting displacements. In the case of an autonomous agent with no a priori knowledge about its sensorimotor apparatus, this compression has to be learned. We propose to use Recurrent Neural Networks to encode motor sequences into a compact representation, which is used to predict the consequence of motor sequences in term of sensory changes. We show that sensory prediction can successfully guide the compression of motor sequences into representations that are organized topologically in term of spatial displacement.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/01/2018

Representation Learning in Partially Observable Environments using Sensorimotor Prediction

In order to explore and act autonomously in an environment, an agent nee...
research
12/31/2017

Neurally Plausible Model of Robot Reaching Inspired by Infant Motor Babbling

In this paper we present a neurally plausible model of robot reaching in...
research
11/01/2016

Detecting Affordances by Visuomotor Simulation

The term "affordance" denotes the behavioral meaning of objects. We prop...
research
05/06/2011

Self-organized adaptation of a simple neural circuit enables complex robot behaviour

Controlling sensori-motor systems in higher animals or complex robots is...
research
02/13/2020

On the Sensory Commutativity of Action Sequences for Embodied Agents

We study perception in the scenario of an embodied agent equipped with f...
research
03/04/2019

Automated Generation of Reactive Programs from Human Demonstration for Orchestration of Robot Behaviors

Social robots or collaborative robots that have to interact with people ...
research
05/11/2020

Autonomous learning and chaining of motor primitives using the Free Energy Principle

In this article, we apply the Free-Energy Principle to the question of m...

Please sign up or login with your details

Forgot password? Click here to reset