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An adaptive interval type-2 fuzzy logic framework for classification of gait patterns of anterior cruciate ligament reconstructed subjects

机译:一种自适应间隔Type-2模糊逻辑框架,用于对韧带重建对象的前腿图谱分类

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This paper aims to investigate a gait pattern classification system for anterior cruciate ligament reconstructed (ACL-R) subjects based on the interval type-2 fuzzy logic (FL). The proposed system intends to model the uncertainties present in kinematics and electromyography (EMG) data used for gait analysis due to intra- and inter-subject stride-to-stride variability and nature of signals. Four features were selected from kinematics and EMG data recorded through wearable wireless sensors. The parameters for the membership functions of these input features were determined using the data recorded for 12 healthy and ACL-R subjects. The parameters for output membership functions and rules were chosen based on the recommendations from physiotherapists and physiatrists. The system was trained by using steepest descent method and tested for singleton and non-singleton inputs. The overall classification accuracy results show that the interval type-2 FL system outperforms the type-1 FL system in recognizing the gait patterns of healthy and ACL-R subjects.
机译:本文旨在基于间隔类型-2模糊逻辑(FL)来研究前令人毛病重建(ACL-R)受试者的步态模式分类系统。所提出的系统旨在模拟用于步态分析的运动学和肌电学(EMG)数据中的不确定性,由于和主题间跨越的潮流性变异性和信号性质。从可穿戴无线传感器记录的运动学和EMG数据中选择了四个特征。使用记录为12个健康和ACL-R对象的数据确定这些输入特征的隶属函数的参数。根据物理治疗师和物理检测者的建议选择输出成员函数和规则的参数。通过使用陡峭的下降方法训练该系统,并测试了单例和非单片输入。整体分类准确性结果表明,间隔类型-2FL系统优于识别健康和ACL-R科目的步态模式的1型流系统。

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