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  4. Machine Learning for Human Motion Intention Detection
 
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Machine Learning for Human Motion Intention Detection

Journal
Sensors
Journal Volume
23
Journal Issue
16
Date Issued
2023-08-01
Author(s)
Lin, Jun Ji
Hsu, Che Kang
WEI-LI HSU  
Tsao, Tsu Chin
FU-CHENG WANG  
JIA-YUSH YEN  
DOI
10.3390/s23167203
URI
https://scholars.lib.ntu.edu.tw/handle/123456789/635494
URL
https://api.elsevier.com/content/abstract/scopus_id/85168735891
Abstract
The gait pattern of exoskeleton control conflicting with the human operator’s (the pilot) intention may cause awkward maneuvering or even injury. Therefore, it has been the focus of many studies to help decide the proper gait operation. However, the timing for the recognization plays a crucial role in the operation. The delayed detection of the pilot’s intent can be equally undesirable to the exoskeleton operation. Instead of recognizing the motion, this study examines the possibility of identifying the transition between gaits to achieve in-time detection. This study used the data from IMU sensors for future mobile applications. Furthermore, we tested using two machine learning networks: a linearfFeedforward neural network and a long short-term memory network. The gait data are from five subjects for training and testing. The study results show that: 1. The network can successfully separate the transition period from the motion periods. 2. The detection of gait change from walking to sitting can be as fast as 0.17 s, which is adequate for future control applications. However, detecting the transition from standing to walking can take as long as 1.2 s. 3. This study also find that the network trained for one person can also detect movement changes for different persons without deteriorating the performance.
Subjects
feedforward neural network (FNN) | human intention detection | human–robot interaction | inertial measurement unit (IMU) | long short-term memory (LSTM)
SDGs

[SDGs]SDG11

Type
journal article

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