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Action understanding based on a combination of one-versus-rest and one-versus-one multi-classification methods

机译:基于一对多休息和一对多的多种分类方法的动作理解

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When people observe the actions of others, they naturally try to understand the underlying intentions. This behavior is called action understanding, and it has an important influence on mental development, language comprehension, and socialization. In this study, we used functional near-infrared spectroscopy (fNIRS) to obtain brain signals related to action understanding and then classified different intentions. Aiming to overcome the drawbacks of traditional multiclass classification methods of one-versus-rest (OVR) and one-versus-one (OVO), in this paper, we propose a new effective method to solve multiclass classification that is a combination of OVR and OVO. Compared with OVO, this new method effectively improved the accuracy of four-class classification from 25% to 48%.
机译:当人们观察他人的行为时,他们自然会试图理解其潜在意图。这种行为称为行动理解,它对心理发展,语言理解和社会化有重要影响。在这项研究中,我们使用功能性近红外光谱(fNIRS)来获取与动作理解有关的大脑信号,然后对不同的意图进行分类。为了克服传统的多对一分类(OVR)和一对多(OVO)分类方法的弊端,本文提出了一种新的有效方法来解决多分类问题,该方法将OVR与OVO。与OVO相比,该新方法有效地将四类分类的准确性从25%提高到48%。

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