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Ensemble kNN classifiers for human gait recognition based on ground reaction forces

机译:基于地面反作用力的集成kNN分类器用于步态识别

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Recognition of people based on their way of movement is one of the most interesting issues of behavioural biometrics. Among the basic characteristics of each biometric system is accuracy. It is currently considered that greater accuracy of biometric can be achieved by ensemble of two and more classifiers. The aim of this study is to present our own method for the usage of ensemble classifiers in the biometrics of the human gait based on ground reaction forces. In the presented ensemble of k-nearest neighbor classifiers the input signals were formed by dividing the ground reaction forces into sub phases characteristic of the support phase of the gait cycle. The research was carried out based on measurements from 200 people (more than 3500 gait cycles). The correct classification rate for proposed here method is more than 97.37%.
机译:基于他们的运动方式来识别人是行为生物识别技术中最有趣的问题之一。每个生物识别系统的基本特征之一就是准确性。当前认为,通过两个或更多个分类器的集成可以实现更高的生物统计准确性。这项研究的目的是提出我们自己的方法,用于基于地面反作用力在人类步态的生物特征识别中使用集成分类器。在提出的k个近邻分类器中,输入信号是通过将地面反作用力划分为步态周期支持阶段的子阶段来形成的。这项研究是基于200人(超过3500个步态周期)的测量结果而进行的。本文提出的方法正确分类率超过97.37%。

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