An Exercise Fatigue Detection Model Based on Machine Learning Methods

03/07/2018
by   Ming-Yen Wu, et al.
0

This study proposes an exercise fatigue detection model based on real-time clinical data which includes time domain analysis, frequency domain analysis, detrended fluctuation analysis, approximate entropy, and sample entropy. Furthermore, this study proposed a feature extraction method which is combined with an analytical hierarchy process to analyze and extract critical features. Finally, machine learning algorithms were adopted to analyze the data of each feature for the detection of exercise fatigue. The practical experimental results showed that the proposed exercise fatigue detection model and feature extraction method could precisely detect the level of exercise fatigue, and the accuracy of exercise fatigue detection could be improved up to 98.65

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/03/2022

Impact of the composition of feature extraction and class sampling in medicare fraud detection

With healthcare being critical aspect, health insurance has become an im...
research
11/01/2020

Comparing Machine Learning Algorithms with or without Feature Extraction for DNA Classification

The classification of DNA sequences is a key research area in bioinforma...
research
10/19/2022

Audio Tampering Detection Based on Shallow and Deep Feature Representation Learning

Digital audio tampering detection can be used to verify the authenticity...
research
10/14/2022

Automated dysgraphia detection by deep learning with SensoGrip

Dysgraphia, a handwriting learning disability, has a serious negative im...
research
04/23/2019

Development of an Entropy-Based Feature Selection Method and Analysis of Online Reviews on Real Estate

In recent years, data posted about real estate on the Internet is curren...
research
01/24/2019

Extracting PICO elements from RCT abstracts using 1-2gram analysis and multitask classification

The core of evidence-based medicine is to read and analyze numerous pape...

Please sign up or login with your details

Forgot password? Click here to reset