Emergence of Human-comparable Balancing Behaviors by Deep Reinforcement Learning

09/06/2018
by   Chuanyu Yang, et al.
0

This paper presents a hierarchical framework based on deep reinforcement learning that learns a diversity of policies for humanoid balance control. Conventional zero moment point based controllers perform limited actions during under-actuation, whereas the proposed framework can perform human-like balancing behaviors such as active push-off of ankles. The learning is done through the design of an explainable reward based on physical constraints. The simulated results are presented and analyzed. The successful emergence of human-like behaviors through deep reinforcement learning proves the feasibility of using an AI-based approach for learning humanoid balancing control in a unified framework.

READ FULL TEXT
research
03/08/2018

A Multi-Objective Deep Reinforcement Learning Framework

This paper presents a new multi-objective deep reinforcement learning (M...
research
12/08/2020

Emergence of Different Modes of Tool Use in a Reaching and Dragging Task

Tool use is an important milestone in the evolution of intelligence. In ...
research
01/15/2023

Modeling Human Cognition with a Hybrid Deep Reinforcement Learning Agent

Human cognition model could help us gain insights in how human cognition...
research
02/07/2020

Learning Whole-body Motor Skills for Humanoids

This paper presents a hierarchical framework for Deep Reinforcement Lear...
research
04/29/2021

On the Emergence of Whole-body Strategies from Humanoid Robot Push-recovery Learning

Balancing and push-recovery are essential capabilities enabling humanoid...
research
11/04/2022

Diversity-based Deep Reinforcement Learning Towards Multidimensional Difficulty for Fighting Game AI

In fighting games, individual players of the same skill level often exhi...
research
05/20/2020

Learning natural locomotion behaviors for humanoid robots using human knowledge

This paper presents a new learning framework that leverages the knowledg...

Please sign up or login with your details

Forgot password? Click here to reset