一种用于恢复和性能评估的混合智能系统

S. M. N. Arosha Senanayake, O. A. Malik, M. Petra, Dansih Zaheer
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引用次数: 4

摘要

本文介绍了一种用于运动员前交叉韧带(ACL)损伤/重建后恢复和性能评估的混合智能系统。将模糊逻辑和基于案例的推理方法相结合,为运动训练师、教练员和临床医生提供了一个辅助工具,用于维护运动员的个人资料,监测康复进展,分类康复状态和调整个人康复方案。利用自调式车载无线传感器采集被试ACL损伤/重建后的运动学和神经肌肉数据,利用主成分分析进行特征提取和变换后,采用自动检测聚类的模糊聚类方法,根据当前恢复状态对数据进行分组。已经设计了一个知识库来存储受试者的配置文件、恢复会话的数据和问题/解决方案对。利用模糊k近邻(f-knn)和余弦相似度测度对相似案例进行恢复分类和选择。一旦选定相关案例,进行适配并进行绩效评估。所提出的系统已在一组健康和术后运动员身上进行了测试,使用留一交叉验证方法对步行/跑步活动进行分类,发现系统的分类准确率超过94%。
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A hybrid intelligent system for recovery and performance evaluation after
This paper presents a hybrid intelligent system for recovery and performance evaluation of athletes after anterior cruciate ligament (ACL) injury/reconstruction. The fuzzy logic and case based reasoning approaches have been combined to build an assistive tool for sports trainers, coaches and clinicians for maintaining athletes' profile, monitoring progress of recovery, classifying recovery status and adjusting the recovery protocols for individuals. The kinematics and neuromuscular data are collected for subjects after ACL injury/reconstruction using self adjusted body-mounted wireless sensors Upon feature extraction and transformation using principal component analysis, the fuzzy clustering with automatic detection of clusters is employed to group the data according to current recovery status. A knowledge base has been designed to store subjects' profiles, recovery sessions' data and problem/solution pairs. The recovery classification and selection of similar cases has been done using fuzzy k-nearest neighbor (f-knn) and cosine similarity measure. Once relevant cases are selected, adaptation is performed and the performance evaluation will be done. The proposed system has been tested on a group of healthy and post-operated athletes and the classification accuracy of the system is found to be more than 94% using leave-one out cross validation method for walking/running activity.
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