Using Learned Predictions as Feedback to Improve Control and Communication with an Artificial Limb: Preliminary Findings

08/08/2014
by   Adam S. R. Parker, et al.
0

Many people suffer from the loss of a limb. Learning to get by without an arm or hand can be very challenging, and existing prostheses do not yet fulfil the needs of individuals with amputations. One promising solution is to provide greater communication between a prosthesis and its user. Towards this end, we present a simple machine learning interface to supplement the control of a robotic limb with feedback to the user about what the limb will be experiencing in the near future. A real-time prediction learner was implemented to predict impact-related electrical load experienced by a robot limb; the learning system's predictions were then communicated to the device's user to aid in their interactions with a workspace. We tested this system with five able-bodied subjects. Each subject manipulated the robot arm while receiving different forms of vibrotactile feedback regarding the arm's contact with its workspace. Our trials showed that communicable predictions could be learned quickly during human control of the robot arm. Using these predictions as a basis for feedback led to a statistically significant improvement in task performance when compared to purely reactive feedback from the device. Our study therefore contributes initial evidence that prediction learning and machine intelligence can benefit not just control, but also feedback from an artificial limb. We expect that a greater level of acceptance and ownership can be achieved if the prosthesis itself takes an active role in transmitting learned knowledge about its state and its situation of use.

READ FULL TEXT

page 1

page 2

page 4

research
05/16/2023

Continually Learned Pavlovian Signalling Without Forgetting for Human-in-the-Loop Robotic Control

Artificial limbs are sophisticated devices to assist people with tasks o...
research
09/18/2013

Temporal-Difference Learning to Assist Human Decision Making during the Control of an Artificial Limb

In this work we explore the use of reinforcement learning (RL) to help w...
research
02/02/2019

Learning User Preferences via Reinforcement Learning with Spatial Interface Valuing

Interactive Machine Learning is concerned with creating systems that ope...
research
11/08/2021

Wrapped Haptic Display for Communicating Physical Robot Learning

Physical interaction between humans and robots can help robots learn to ...
research
05/10/2023

Pavlok-Nudge: A Feedback Mechanism for Atomic Behaviour Modification with Snoring Usecase

This paper proposes a feedback mechanism to 'break bad habits' using the...
research
12/18/2018

Assistive robotic device: evaluation of intelligent algorithms

Assistive robotic devices can be used to help people with upper body dis...
research
10/09/2021

Learning to Control Complex Robots Using High-Dimensional Interfaces: Preliminary Insights

Human body motions can be captured as a high-dimensional continuous sign...

Please sign up or login with your details

Forgot password? Click here to reset