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Hierarchical Multi-Classification for Sensor-based Badminton Activity Recognition

机译:基于传感器的羽毛球活动识别的分层多分类

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Fast development of sensor technology makes sensor equipments more and more smart and wearable. It further boost the need of sensor-based human activity recognition. Due to the lack of large-scale labeled datasets in practical AI applications, it is important to utilize prior information of the categories in sensor-based human activity recognition. In this paper, we propose a Hierarchical Multi-Classificaion (HMC) framework for sensor-based badminton activity recognition with the help of the prior information of badminton activity categories. Specifically, the multi-class sensor-based badminton activity recognition task is performed in two steps: (1). Any input data for a badminton activity are classified into one of the major classes which are based on their characteristic features; (2). They are further classified into one of the specific categories of badminton activity as required. It is demonstrated by the experimental results on BSS-V2 dataset that our proposed method can get up to 83.9% badminton activity recognition accuracy which is 1.7% better than previous state-of-the-art models.
机译:传感器技术的快速发展使传感器设备越来越聪明,可穿戴。它进一步提高了基于传感器的人类活动识别的需求。由于实用AI应用中缺乏大规模标记的数据集,重要的是利用基于传感器的人类活动识别的类别的先前信息。在本文中,我们提出了一种用于羽毛球活动类别的先前信息的基于传感器的羽毛球活动识别的分层多分类(HMC)框架。具体地,以两个步骤执行的基于多级传感器的羽毛球活动识别任务:(1)。羽毛球活动的任何输入数据都被分类为基于其特征特征的主要类别之一; (2)。他们进一步分为一个特定类别的羽毛球活动之一。通过实验结果证明了BSS-V2数据集的实验结果,我们所提出的方法可以获得高达83.9%的羽毛球活动识别准确性,比以前的最先进的模型更好地为1.7%。

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