自由式单板滑雪可穿戴技巧分类

B. Groh, Martin Fleckenstein, B. Eskofier
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引用次数: 20

摘要

自由式单板滑雪的数字运动分析需要稳定的动作检测和准确的分类。自由式单板滑雪包含几个技巧类别,所有这些都必须在训练课程或比赛中得到认可。虽然以前的工作已经解决了特定的技巧或回合的分类,但没有已知的方法包含一个完整的管道来检测和分类来自多个类别的技巧。在本文中,我们提出了一个包含两个主要的自由式技巧类别的技巧检测、分类和分类的分类管道。我们根据两次不同的收购数据评估了我们的算法,这些数据总共有11名运动员和275个把戏项目。对两类把戏进行分类,召回率分别为96.6%和97.4%。第一类和第二类的分类准确率分别为90.3%和93.3%。
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Wearable trick classification in freestyle snowboarding
Digital motion analysis in freestyle snowboarding requires a stable trick detection and accurate classification. Freestyle snowboarding contains several trick categories that all have to be recognized for an application in training sessions or competitions. While previous work already addressed the classification of specific tricks or turns, there is no known method that contains a full pipeline for detection and classification of tricks from multiple categories. In this paper, we suggest a classification pipeline containing the detection, categorization and classification of tricks of two major freestyle trick categories. We evaluated our algorithm based on data from two different acquisitions with a total number of eleven athletes and 275 trick events. Tricks of both categories were categorized with recall results of 96.6% and 97.4%. The classification of the tricks was evaluated to an accuracy of 90.3 % for the first and 93.3% for the second category.
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