A quality prediction method for weight lifting activity

Activity recognition has found immense interest in the field of sports activity recognition in recent time. The application has found extensive utility in giving machine based feedback on how well the performance in training is by any sports athlete. The present work proposes a model to predict the...

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Published inMichael Faraday IET International Summit 2015 p. 95
Main Authors Chatterjee, S, Chakraborty, R, Dey, N, Hore, S
Format Conference Proceeding
LanguageEnglish
Published Stevenage, UK IET 2015
The Institution of Engineering & Technology
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Abstract Activity recognition has found immense interest in the field of sports activity recognition in recent time. The application has found extensive utility in giving machine based feedback on how well the performance in training is by any sports athlete. The present work proposes a model to predict the quality of training along with the mistakes which can have a severe effect on performance of the athlete or health condition of any subject. The dataset contains data of perfect execution of weight lifting activity and the same with four common mistakes. 34 features have been selected and used to train and test the proposed model. A multi-layer feed-forward network (MLP-FFN), RBFNN, Random Forest and Hidden Nai¨ve Bayes (HNB) classifiers are employed to determine the objective. The assessment of used methods has been done by observing different performance measures such as Kappa statistic, Mean absolute error (MAE), Root mean squared error (RMSE), Relative absolute error (RAE), True positive (TP) Rate, False positive (FP) Rate and F-Measure. The experimental results have shown almost perfect classification using MLP-FFN and satisfactory results for all the proposed models.
AbstractList Activity recognition has found immense interest in the field of sports activity recognition in recent time. The application has found extensive utility in giving machine based feedback on how well the performance in training is by any sports athlete. The present work proposes a model to predict the quality of training along with the mistakes which can have a severe effect on performance of the athlete or health condition of any subject. The dataset contains data of perfect execution of weight lifting activity and the same with four common mistakes. 34 features have been selected and used to train and test the proposed model. A multi-layer feed-forward network (MLP-FFN), RBFNN, Random Forest and Hidden Naïve Bayes (HNB) classifiers are employed to determine the objective. The assessment of used methods has been done by observing different performance measures such as Kappa statistic, Mean absolute error (MAE), Root mean squared error (RMSE), Relative absolute error (RAE), True positive (TP) Rate, False positive (FP) Rate and F-Measure. The experimental results have shown almost perfect classification using MLP-FFN and satisfactory results for all the proposed models.
Activity recognition has found immense interest in the field of sports activity recognition in recent time. The application has found extensive utility in giving machine based feedback on how well the performance in training is by any sports athlete. The present work proposes a model to predict the quality of training along with the mistakes which can have a severe effect on performance of the athlete or health condition of any subject. The dataset contains data of perfect execution of weight lifting activity and the same with four common mistakes. 34 features have been selected and used to train and test the proposed model. A multi-layer feed-forward network (MLP-FFN), RBFNN, Random Forest and Hidden Nai¨ve Bayes (HNB) classifiers are employed to determine the objective. The assessment of used methods has been done by observing different performance measures such as Kappa statistic, Mean absolute error (MAE), Root mean squared error (RMSE), Relative absolute error (RAE), True positive (TP) Rate, False positive (FP) Rate and F-Measure. The experimental results have shown almost perfect classification using MLP-FFN and satisfactory results for all the proposed models.
Author Dey, N
Chakraborty, R
Hore, S
Chatterjee, S
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Keywords sports activity recognition
false positive rate
TP rate
weight lifting activity
sports athlete
FP rate
F-Measure
quality prediction method
random forest
performance measures
relative absolute error
perfect execution
root mean squared error
multilayer perceptrons
mean absolute error
pattern classification
multilayer feedforward network
HNB classifiers
true positive rate
machine based feedback
kappa statistic
RMSE
MAE
RBFNN
health condition
hidden Naive Bayes
RAE
Bayes methods
sport
MLP-FFN
immense interest
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Snippet Activity recognition has found immense interest in the field of sports activity recognition in recent time. The application has found extensive utility in...
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StartPage 95
SubjectTerms Activity recognition
Bayesian analysis
Errors
Feature recognition
Hoisting
Humanities computing
Mathematical models
Neural computing techniques
Other topics in statistics
Training
Title A quality prediction method for weight lifting activity
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