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Automatic Classification of the Sub-Techniques (Gears) Used in Cross-Country Ski Skating Employing a Mobile Phone

机译:使用手机进行越野滑冰中使用的子技术(齿轮)的自动分类

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摘要

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.
机译:本研究的目的是开发和验证使用智能手机加速度计数据对越野(XC)滑冰装备(G)进行分类的自动算法。 11位XC滑雪者(七名男性,四名女性)在区域至国际水平的性能下,使用固定档位(G2left,G2right,G3,G4left,G4right)在跑步机上进行了滚轴滑雪试验,并使用不同的速度进行了950米的试验和倾斜,像往常一样使用齿轮和侧面。比较了智能手机(在胸部)和基于视频记录的装备分类。对于机器学习,将集合数据库与单个数据进行比较。在所有情况下,智能手机应用程序都能正确识别固定档位的试验。在950米的试验中,参与者通过视频分析评估执行了140±22个周期,而自动智能手机应用程序给出了相似的值。根据收集的数据,正确识别齿轮的时间为86.0%±8.9%,通过单个数据的机器学习,该值上升到90.3%±4.1%(P <0.01)。在换档之间,尤其是进出G3时,分类通常是不正确的。对于滑雪者来说,在齿轮之间进行相对较少的转换时,识别通常是正确的。识别G2left,G2right,G3,G4left和G4right的自动过程的准确性分别为96%,90%,81%,88%和94%。该算法在可变规程中使用单个齿轮时100%的时间正确识别了齿轮,而使用可变齿轮时90%的时间正确地识别了齿轮。关于识别齿轮之间或给定齿轮内采用的侧面的过渡,可以改进该算法。

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