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An Interval Type-2 Fuzzy Logic Based Classification Model for Testing Single-Leg Balance Performance of Athletes after Knee Surgery

机译:基于间隔Type-2模糊逻辑基于基于模糊的分类模型,用于测试膝关节手术后运动员的单腿平衡性能

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Single-leg balance test is one of the most common assessment methods in order to evaluate the athletes' ability to perform certain sports actions efficiently, quickly and safely. The balance and postural control of an athlete is usually affected after a lower limb injury. This study proposes an interval type-2 fuzzy logic (FL) based automated classification model for single-leg balance assessment of subjects after knee surgery. The system uses the integrated kinematics and electromyography (EMG) data from the weight-bearing leg during the balance test in order to classify the performance of a subject. The data are recorded through wearable wireless motion and EMG sensors. The parameters for the membership functions of input and output features are determined using the data recorded from a group of athletes (healthy/having knee surgery) and the recommendations from physiotherapists and physiatrists, respectively. Four types of fuzzy logic systems namely type-1 non-singleton interval type-2 (NSFLS type-2), singleton type-2 (SFLS type-2), non-singleton type-1 (NSFLS type-1) and singleton type-1 (SFLS type-1) were designed and their performances were compared. The overall classification accuracy results show that the interval type-2 FL system outperforms the type-1 FL system in classifying the balance test performance of the subjects. This pilot study suggests that a fuzzy logic based automated model can be developed in order to facilitate the physiotherapists and physiatrists in determining the impairments in the balance control of the athletes after knee surgery.
机译:单腿平衡测试是最常见的评估方法之一,以便衡量运动员有效,快速安全地执行某些体育活动的能力。运动员的平衡和姿势控制通常在肢体损伤后受到影响。本研究提出了一种基于间隔Type-2模糊逻辑(FL)自动分类模型,用于膝关节外科对象的单腿平衡评估。该系统在余额测试期间使用来自负重腿的集成运动学和肌电图(EMG)数据,以分类对象的性能。数据通过可穿戴无线运动和EMG传感器记录。输入和输出特征的成员函数的参数使用从一组运动员(健康/具有膝关节外科)以及物理治疗师和物理分子的建议分别确定。四种类型的模糊逻辑系统即1型非单例间隔Type-2(NSFL型-2),单例类型-2(SFL型-2),非单例类型-1(NSFL型-1)和单例类型设计了-1(SFL型-1),并比较了它们的性能。整体分类准确性结果表明,间隔类型-2FL系统优于分类对象的平衡测试性能方面的1型流系统。该试点研究表明,可以开发模糊基于逻辑的自动化模型,以促进物理治疗师和物理检测者在膝关节后确定运动员平衡控制中的损伤。

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