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Clustering of sEMG signals on real-life activities using fractal dimension and self-organizing maps

机译:使用分形维数和自组织图对真实活动中的sEMG信号进行聚类

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Recent advances in hand classification using noninvasive sensors permit the adequately recognition of movements with high precision. However, these applications in prosthesis are far from reality, since the acquired muscle signals does not meet real-life conditions. As recent databases incorporate these real conditions into their data acquisition protocol, it is necessary to analyze the muscle signal characteristics and evaluate if these could be separated. This paper applies the Higuchi's fractal dimension in two activities of daily living using real-life signals of the triceps brachii from the NinaPro database. The characteristics are first obtained from a feature extraction technique, then clustered using a two-level approach of k-means in a self-organizing map (SOM). The results from intra-subject analysis in 15 individuals show clusterization of the fractal dimension for sEMG signals using three Kmax values. The clusters selection are analyzed using a cluster score based on a similarity index for task identification.
机译:使用无创传感器的手分类的最新进展允许以高精度充分识别运动。但是,由于获得的肌肉信号不符合现实生活条件,因此在假体中的这些应用还远远没有实现。由于最近的数据库将这些真实条件纳入其数据采集协议中,因此有必要分析肌肉信号特征并评估是否可以将其分离。本文利用来自NinaPro数据库的肱三头肌的真实信号,将Higuchi的分形维数应用于日常生活的两种活动中。首先从特征提取技术中获取特征,然后在自组织映射(SOM)中使用k-means的两级方法进行聚类。 15位受试者的受试者内部分析结果显示,使用3个K表示sEMG信号的分形维数聚类 max 价值观。使用基于相似度指标的聚类得分对聚类选择进行分析,以进行任务识别。

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