The Proceedings of the Symposium on the Motion and Vibration Control
Online ISSN : 2424-3000
2021.17
Session ID : D21
Conference information

Evaluation of Machine Learning Model for Action Detection in User with Wearable Robot
*Noriaki MIZUKAMIMinoru HASHIMOTO
Author information
CONFERENCE PROCEEDINGS RESTRICTED ACCESS

Details
Abstract

A human body support robot has been attracted, because a robotic technology is expected to support these aging people for walking trainings or rehabilitation trainings, and workers for heavy lifting. These robots tend to mount a single assist control system, walking assist or lifting assist. In this case, the robot does not assist for human when human perform the action that does not mount an assist control system in the robot. When the robot does not assist for human, human suffers from the robot load. When the robot has a multiple assist control system, human needs to change the assist control systems, and this assistance is not seamless. The purpose of this research is to develop the function that automatically changes assist control systems by detecting a human action. This paper describes the method for detecting human action using machine learning. We build the prediction models based on decision tree. We verified a percentage of correct detection and a tree structure for mounting in the robot. In the result, the percentage of correct detection is more than 90%, and we are able to build the prediction model, which the tree structure is simple.

Content from these authors
© 2021 The Japan Society of Mechanical Engineers
Previous article Next article
feedback
Top