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The effectiveness of feature selection methods on physical activity recognition

机译:特征选择方法在体育活动识别中的有效性

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For the definition of physical activity monitoring with long activity times can be costly and there is a need for efficient computer based algorithms. Smartphone sensors such as accelerometer, magnetometer, and gyroscope for physical activity recognition are used in many researches. In this study, we propose a multi-modal approach to classify the different physical activities at the feature level by fusing electrocardiography (ECG), accelerometer, magnetometer, and gyroscope signals. We use Support Vector Machine (SVM), nearest neighbors, Naive Bayes, Random Tree and Bagging RepTree classifiers as learning algorithms and provide comprehensive empirical results on fusion strategy. Our experimental results on real clinical examples from the MHealth dataset show that the proposed feature-level fusion approach gives an average accuracy of 98.40% using SVM with the highest value in all scenarios. We also observe that when we use the SVM classifier with the gyroscope signal, which we take the highest value as a single modal, it gives an average accuracy of 96.27%. We achieve a significant improvement in comparision with existing studies.
机译:为了定义身体活动,长时间活动的监视可能是昂贵的,并且需要有效的基于计算机的算法。用于身体活动识别的智能手机传感器(如加速度计,磁力计和陀螺仪)已用于许多研究中。在这项研究中,我们提出了一种多模式方法,通过融合心电图(ECG),加速度计,磁力计和陀螺仪信号在特征级别对不同的身体活动进行分类。我们使用支持向量机(SVM),最近邻,朴素贝叶斯,随机树和Bagging RepTree分类器作为学习算法,并提供融合策略的综合经验结果。我们对来自MHealth数据集的真实临床实例的实验结果表明,使用SVM在所有情况下均具有最高值,所提出的特征级融合方法可提供98.40%的平均准确度。我们还观察到,当我们将SVM分类器与陀螺仪信号一起使用时,我们将最大值作为单个模态使用,它的平均准确度为96.27%。与现有研究相比,我们取得了重大进步。

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