Automatic Classification of the Sub-Techniques (Gears) Used in Cross-Country Ski Skating Employing a Mobile Phone
The purpose of the current study was to develop and validate an automatic algorithm for classification of cross-country (XC) ski-skating gears (G) using Smartphone accelerometer data. Eleven XC skiers (seven men, four women) with regional-to-international levels of performance carried out roller ski...
Main Authors: | , , , , , , |
---|---|
Format: | Article |
Language: | English |
Published: |
MDPI AG
2014-10-01
|
Series: | Sensors |
Subjects: | |
Online Access: | http://www.mdpi.com/1424-8220/14/11/20589 |
id |
doaj-7b6d8cde194341558b8d2f921a3e501c |
---|---|
record_format |
Article |
spelling |
doaj-7b6d8cde194341558b8d2f921a3e501c2020-11-24T22:04:12ZengMDPI AGSensors1424-82202014-10-011411205892060110.3390/s141120589s141120589Automatic Classification of the Sub-Techniques (Gears) Used in Cross-Country Ski Skating Employing a Mobile PhoneThomas Stöggl0Anders Holst1Arndt Jonasson2Erik Andersson3Tobias Wunsch4Christer Norström5Hans-Christer Holmberg6Department of Sport Science and Kinesiology, University of Salzburg, Hallein/Rif 5400, AustriaSwedish Institute of Computer Science, Kista 16440, SwedenSwedish Institute of Computer Science, Kista 16440, SwedenSwedish Winter Sports Research Centre, Department of Health Sciences, Mid Sweden University, Östersund 83140, SwedenDepartment of Sport Science and Kinesiology, University of Salzburg, Hallein/Rif 5400, AustriaSwedish Institute of Computer Science, Kista 16440, SwedenSwedish Winter Sports Research Centre, Department of Health Sciences, Mid Sweden University, Östersund 83140, SwedenThe purpose of the current study was to develop and validate an automatic algorithm for classification of cross-country (XC) ski-skating gears (G) using Smartphone accelerometer data. Eleven XC skiers (seven men, four women) with regional-to-international levels of performance carried out roller skiing trials on a treadmill using fixed gears (G2left, G2right, G3, G4left, G4right) and a 950-m trial using different speeds and inclines, applying gears and sides as they normally would. Gear classification by the Smartphone (on the chest) and based on video recordings were compared. Formachine-learning, a collective database was compared to individual data. The Smartphone application identified the trials with fixed gears correctly in all cases. In the 950-m trial, participants executed 140 ± 22 cycles as assessed by video analysis, with the automatic Smartphone application giving a similar value. Based on collective data, gears were identified correctly 86.0% ± 8.9% of the time, a value that rose to 90.3% ± 4.1% (P < 0.01) with machine learning from individual data. Classification was most often incorrect during transition between gears, especially to or from G3. Identification was most often correct for skiers who made relatively few transitions between gears. The accuracy of the automatic procedure for identifying G2left, G2right, G3, G4left and G4right was 96%, 90%, 81%, 88% and 94%, respectively. The algorithm identified gears correctly 100% of the time when a single gear was used and 90% of the time when different gears were employed during a variable protocol. This algorithm could be improved with respect to identification of transitions between gears or the side employed within a given gear.http://www.mdpi.com/1424-8220/14/11/20589algorithmcollective classificationgaussian filterindividual classificationmarkov chainmachine learningsmartphone |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Thomas Stöggl Anders Holst Arndt Jonasson Erik Andersson Tobias Wunsch Christer Norström Hans-Christer Holmberg |
spellingShingle |
Thomas Stöggl Anders Holst Arndt Jonasson Erik Andersson Tobias Wunsch Christer Norström Hans-Christer Holmberg Automatic Classification of the Sub-Techniques (Gears) Used in Cross-Country Ski Skating Employing a Mobile Phone Sensors algorithm collective classification gaussian filter individual classification markov chain machine learning smartphone |
author_facet |
Thomas Stöggl Anders Holst Arndt Jonasson Erik Andersson Tobias Wunsch Christer Norström Hans-Christer Holmberg |
author_sort |
Thomas Stöggl |
title |
Automatic Classification of the Sub-Techniques (Gears) Used in Cross-Country Ski Skating Employing a Mobile Phone |
title_short |
Automatic Classification of the Sub-Techniques (Gears) Used in Cross-Country Ski Skating Employing a Mobile Phone |
title_full |
Automatic Classification of the Sub-Techniques (Gears) Used in Cross-Country Ski Skating Employing a Mobile Phone |
title_fullStr |
Automatic Classification of the Sub-Techniques (Gears) Used in Cross-Country Ski Skating Employing a Mobile Phone |
title_full_unstemmed |
Automatic Classification of the Sub-Techniques (Gears) Used in Cross-Country Ski Skating Employing a Mobile Phone |
title_sort |
automatic classification of the sub-techniques (gears) used in cross-country ski skating employing a mobile phone |
publisher |
MDPI AG |
series |
Sensors |
issn |
1424-8220 |
publishDate |
2014-10-01 |
description |
The purpose of the current study was to develop and validate an automatic algorithm for classification of cross-country (XC) ski-skating gears (G) using Smartphone accelerometer data. Eleven XC skiers (seven men, four women) with regional-to-international levels of performance carried out roller skiing trials on a treadmill using fixed gears (G2left, G2right, G3, G4left, G4right) and a 950-m trial using different speeds and inclines, applying gears and sides as they normally would. Gear classification by the Smartphone (on the chest) and based on video recordings were compared. Formachine-learning, a collective database was compared to individual data. The Smartphone application identified the trials with fixed gears correctly in all cases. In the 950-m trial, participants executed 140 ± 22 cycles as assessed by video analysis, with the automatic Smartphone application giving a similar value. Based on collective data, gears were identified correctly 86.0% ± 8.9% of the time, a value that rose to 90.3% ± 4.1% (P < 0.01) with machine learning from individual data. Classification was most often incorrect during transition between gears, especially to or from G3. Identification was most often correct for skiers who made relatively few transitions between gears. The accuracy of the automatic procedure for identifying G2left, G2right, G3, G4left and G4right was 96%, 90%, 81%, 88% and 94%, respectively. The algorithm identified gears correctly 100% of the time when a single gear was used and 90% of the time when different gears were employed during a variable protocol. This algorithm could be improved with respect to identification of transitions between gears or the side employed within a given gear. |
topic |
algorithm collective classification gaussian filter individual classification markov chain machine learning smartphone |
url |
http://www.mdpi.com/1424-8220/14/11/20589 |
work_keys_str_mv |
AT thomasstoggl automaticclassificationofthesubtechniquesgearsusedincrosscountryskiskatingemployingamobilephone AT andersholst automaticclassificationofthesubtechniquesgearsusedincrosscountryskiskatingemployingamobilephone AT arndtjonasson automaticclassificationofthesubtechniquesgearsusedincrosscountryskiskatingemployingamobilephone AT erikandersson automaticclassificationofthesubtechniquesgearsusedincrosscountryskiskatingemployingamobilephone AT tobiaswunsch automaticclassificationofthesubtechniquesgearsusedincrosscountryskiskatingemployingamobilephone AT christernorstrom automaticclassificationofthesubtechniquesgearsusedincrosscountryskiskatingemployingamobilephone AT hanschristerholmberg automaticclassificationofthesubtechniquesgearsusedincrosscountryskiskatingemployingamobilephone |
_version_ |
1725829974038937600 |