Data’s Hidden Data: Qualitative Revelations of Sports Efficiency Analysis brought by Neural Network Performance Metrics
In the study of effectiveness and efficiency of an athlete’s performance, intelligent systems can be applied on qualitative approaches and their performance metrics provide useful information on not just the quality of the data, but also reveal issues about the observational criteria and data collec...
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2018-12-01
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doaj-d922b245f8104738b1739243e81120382020-11-24T22:22:41ZengDesafio SingularMotricidade 1646-107X2182-29722018-12-011449410210.6063/motricidade.1598415984Data’s Hidden Data: Qualitative Revelations of Sports Efficiency Analysis brought by Neural Network Performance MetricsAna Teresa Campaniço0António Valente1Rogério Serôdio2Sérgio Escalera3INESC TEC - INESC Technology and Science and School of Science and Technology, University Trás-os-Montes and Alto DouroINESC TEC - INESC Technology and Science and School of Science and Technology, University of Trás-os Montes and Alto DouroDepartment of Matematics, University of Beira InteriorUniversity of Barcelona and Computer Vision CenterIn the study of effectiveness and efficiency of an athlete’s performance, intelligent systems can be applied on qualitative approaches and their performance metrics provide useful information on not just the quality of the data, but also reveal issues about the observational criteria and data collection context itself. 2000 executions of two similar exercises, with different levels of complexity, were collected through a single inertial sensor applied on the fencer’s weapon hand. After the signals were split into their key segments through Dynamic Time Warping, the extracted features and respective qualitative evaluations were fed into a Neural Network to learn the patterns that distinguish a good from a bad execution. The performance analysis of the resulting models returned a prediction accuracy of 76.6% and 72.7% for each exercise, but other metrics pointed to the data suffering from high bias. This points towards an imbalance in the qualitative criteria representation of the bad executions, which can be explained by: i) reduced number of samples; ii) ambiguity in the definition of the observation criteria; iii) a single sensor being unable to fully capture the context without taking the actions of the other key body segments into account.https://revistas.rcaap.pt/motricidade/article/view/15984 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Ana Teresa Campaniço António Valente Rogério Serôdio Sérgio Escalera |
spellingShingle |
Ana Teresa Campaniço António Valente Rogério Serôdio Sérgio Escalera Data’s Hidden Data: Qualitative Revelations of Sports Efficiency Analysis brought by Neural Network Performance Metrics Motricidade |
author_facet |
Ana Teresa Campaniço António Valente Rogério Serôdio Sérgio Escalera |
author_sort |
Ana Teresa Campaniço |
title |
Data’s Hidden Data: Qualitative Revelations of Sports Efficiency Analysis brought by Neural Network Performance Metrics |
title_short |
Data’s Hidden Data: Qualitative Revelations of Sports Efficiency Analysis brought by Neural Network Performance Metrics |
title_full |
Data’s Hidden Data: Qualitative Revelations of Sports Efficiency Analysis brought by Neural Network Performance Metrics |
title_fullStr |
Data’s Hidden Data: Qualitative Revelations of Sports Efficiency Analysis brought by Neural Network Performance Metrics |
title_full_unstemmed |
Data’s Hidden Data: Qualitative Revelations of Sports Efficiency Analysis brought by Neural Network Performance Metrics |
title_sort |
data’s hidden data: qualitative revelations of sports efficiency analysis brought by neural network performance metrics |
publisher |
Desafio Singular |
series |
Motricidade |
issn |
1646-107X 2182-2972 |
publishDate |
2018-12-01 |
description |
In the study of effectiveness and efficiency of an athlete’s performance, intelligent systems can be applied on qualitative approaches and their performance metrics provide useful information on not just the quality of the data, but also reveal issues about the observational criteria and data collection context itself. 2000 executions of two similar exercises, with different levels of complexity, were collected through a single inertial sensor applied on the fencer’s weapon hand. After the signals were split into their key segments through Dynamic Time Warping, the extracted features and respective qualitative evaluations were fed into a Neural Network to learn the patterns that distinguish a good from a bad execution. The performance analysis of the resulting models returned a prediction accuracy of 76.6% and 72.7% for each exercise, but other metrics pointed to the data suffering from high bias. This points towards an imbalance in the qualitative criteria representation of the bad executions, which can be explained by: i) reduced number of samples; ii) ambiguity in the definition of the observation criteria; iii) a single sensor being unable to fully capture the context without taking the actions of the other key body segments into account. |
url |
https://revistas.rcaap.pt/motricidade/article/view/15984 |
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