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A Video-Based Classification System for Assessing Locomotor Skills in Children

机译:基于视频的分类系统用于评估儿童运动技能

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摘要

The Test of Gross Motor Development 2 (TGMD-2) is currently the standard approach for assessing fundamental movement skills (FMS), including locomotor and object control skills. However, its extensive application is restricted by its low efficiency and requirement of expert training for large-scale evaluations. This study evaluated the accuracy of a newly-developed video-based classification system (VCS) with a marker-less sensor to assess children’s locomotor skills. A total of 203 typically-developing children aged three to eight years executed six locomotor skills, following the TGMD-2 guidelines. A Kinect v2 sensor was used to capture their activities, and videos were recorded for further evaluation by a trained rater. A series of computational-kinematic-based algorithms was developed for instant performance rating. The VCS exhibited moderate-to-very good levels of agreement with the rater, ranging from 66.1% to 87.5%, for each skill, and 72.4% for descriptive ratings. Paired t-test revealed that there were no significant differences, but significant positive correlation, between the standard scores determined by the two approaches. Tukey mean difference plot suggested there was no bias, with a mean difference (SD) of -0.16 (1.8) and respective 95% confidence interval of 3.5. The kappa agreement for the descriptive ratings between the two approaches was found to be moderate (k = 0.54, p < 0.01). Overall, the results suggest the VCS could potentially be an alternative to the conventional TGMD-2 assessment approach for assessing children’s locomotor skills without the necessity of the presence of an experienced rater for the administration.
机译:总电机开发2(TGMD-2)的测试是目前评估基础运动技能(FMS)的标准方法,包括机器人和对象控制技能。但是,其广泛的应用受到其对大规模评估的低效率和专家培训要求的限制。本研究评估了新开发的基于视频的分类系统(VCS)的准确性,其具有较少的标记传感器,以评估儿童的机器人技能。在TGMD-2指南之后,共有203名典型的典型发展儿童六至八年达到了六个机器人技能。用于捕获其活动的Kinect V2传感器,并记录视频以供培训的评估者进一步评估。为即时性能评级开发了一系列基于计算的运动算法。 VCS与评估者表现出中度至关重量的协议,每个技能的66.1%至87.5%,对描述性评级的72.4%。配对T检测显示,在两种方法确定的标准分数之间,没有显着差异,但显着的正相关性。 Tukey意思差异图表明没有偏差,平均差异(SD)为-0.16(1.8),相应的95%置信区间为3.5。发现两种方法之间的描述性评级的Kappa协议是适度的(k = 0.54,p <0.01)。总体而言,结果表明VCS可能是传统的TGMD-2评估方法,用于评估儿童运动技能的传统TGMD-2评估方法,而无需存在经验丰富的行政税率。

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