DMAP: a Distributed Morphological Attention Policy for Learning to Locomote with a Changing Body

09/28/2022
by   Alberto Silvio Chiappa, et al.
9

Biological and artificial agents need to deal with constant changes in the real world. We study this problem in four classical continuous control environments, augmented with morphological perturbations. Learning to locomote when the length and the thickness of different body parts vary is challenging, as the control policy is required to adapt to the morphology to successfully balance and advance the agent. We show that a control policy based on the proprioceptive state performs poorly with highly variable body configurations, while an (oracle) agent with access to a learned encoding of the perturbation performs significantly better. We introduce DMAP, a biologically-inspired, attention-based policy network architecture. DMAP combines independent proprioceptive processing, a distributed policy with individual controllers for each joint, and an attention mechanism, to dynamically gate sensory information from different body parts to different controllers. Despite not having access to the (hidden) morphology information, DMAP can be trained end-to-end in all the considered environments, overall matching or surpassing the performance of an oracle agent. Thus DMAP, implementing principles from biological motor control, provides a strong inductive bias for learning challenging sensorimotor tasks. Overall, our work corroborates the power of these principles in challenging locomotion tasks.

READ FULL TEXT

page 5

page 9

page 21

research
09/18/2023

Adjustbot: Bio-Inspired Quadruped Robot with Adjustable Posture and Undulated Body for Challenging Terradynamic Tasks

The ability to modify morphology in response to environmental changes re...
research
03/30/2020

Environmental Adaptation of Robot Morphology and Control through Real-world Evolution

Robots operating in the real world will experience a range of different ...
research
02/03/2021

Embodied Intelligence via Learning and Evolution

The intertwined processes of learning and evolution in complex environme...
research
06/27/2022

Centralized and Decentralized Control in Modular Robots and Their Effect on Morphology

In Evolutionary Robotics, evolutionary algorithms are used to co-optimiz...
research
02/14/2019

Learning to Control Self-Assembling Morphologies: A Study of Generalization via Modularity

Contemporary sensorimotor learning approaches typically start with an ex...
research
02/22/2023

Universal Morphology Control via Contextual Modulation

Learning a universal policy across different robot morphologies can sign...
research
08/02/2021

How Morphological Computation shapes Integrated Information in Embodied Agents

The Integrated Information Theory provides a quantitative approach to co...

Please sign up or login with your details

Forgot password? Click here to reset