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Classification of Horse Gaits Using FCM-Based Neuro-Fuzzy Classifier from the Transformed Data Information of Inertial Sensor

机译:使用基于FCM的神经模糊分类器从惯性传感器的转换数据信息中对马步态进行分类

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摘要

In this study, we classify four horse gaits (walk, sitting trot, rising trot, canter) of three breeds of horse (Jeju, Warmblood, and Thoroughbred) using a neuro-fuzzy classifier (NFC) of the Takagi-Sugeno-Kang (TSK) type from data information transformed by a wavelet packet (WP). The design of the NFC is accomplished by using a fuzzy c-means (FCM) clustering algorithm that can solve the problem of dimensionality increase due to the flexible scatter partitioning. For this purpose, we use the rider’s hip motion from the sensor information collected by inertial sensors as feature data for the classification of a horse’s gaits. Furthermore, we develop a coaching system under both real horse riding and simulator environments and propose a method for analyzing the rider’s motion. Using the results of the analysis, the rider can be coached in the correct motion corresponding to the classified gait. To construct a motion database, the data collected from 16 inertial sensors attached to a motion capture suit worn by one of the country’s top-level horse riding experts were used. Experiments using the original motion data and the transformed motion data were conducted to evaluate the classification performance using various classifiers. The experimental results revealed that the presented FCM-NFC showed a better accuracy performance (97.5%) than a neural network classifier (NNC), naive Bayesian classifier (NBC), and radial basis function network classifier (RBFNC) for the transformed motion data.
机译:在这项研究中,我们使用Takagi-Sugeno-Kang( TSK)类型,由小波包(WP)转换后的数据信息。 NFC的设计是通过使用模糊c均值(FCM)聚类算法完成的,该算法可以解决由于灵活的散布分区而导致维数增加的问题。为此,我们将惯性传感器收集的传感器信息中的骑手的髋部运动用作特征数据,用于对马步态进行分类。此外,我们开发了在真实骑马和模拟器环境下的教练系统,并提出了一种分析骑手动作的方法。使用分析结果,可以按照对应的步态以正确的运动指导骑手。为了建立运动数据库,使用了从16个惯性传感器收集的数据,该传感器连接到该国一位顶级骑马专家穿着的运动捕捉服上。进行了使用原始运动数据和变换后的运动数据的实验,以使用各种分类器评估分类性能。实验结果表明,对于变换后的运动数据,所提出的FCM-NFC比神经网络分类器(NNC),朴素贝叶斯分类器(NBC)和径向基函数网络分类器(RBFNC)表现出更好的准确性(97.5%)。

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