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A Random Forest-based ensemble method for activity recognition

机译:一种基于森林的基于随机集成的活动识别方法

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This paper presents a multi-sensor ensemble approach to human physical activity (PA) recognition, using random forest. We designed an ensemble learning algorithm, which integrates several independent Random Forest classifiers based on different sensor feature sets to build a more stable, more accurate and faster classifier for human activity recognition. To evaluate the algorithm, PA data collected from the PAMAP (Physical Activity Monitoring for Aging People), which is a standard, publicly available database, was utilized to train and test. The experimental results show that the algorithm is able to correctly recognize 19 PA types with an accuracy of 93.44%, while the training is faster than others. The ensemble classifier system based on the RF (Random Forest) algorithm can achieve high recognition accuracy and fast calculation.
机译:本文提出了一种使用随机森林的多传感器整体识别方法,用于人类的身体活动(PA)识别。我们设计了一种集成学习算法,该算法基于不同的传感器功能集集成了多个独立的随机森林分类器,以构建更稳定,更准确和更快的人类活动识别器。为了评估该算法,利用从PAMAP(老年人的体育活动监测)收集的PA数据进行训练和测试,该数据是一个标准的,可公开获得的数据库。实验结果表明,该算法能够正确识别19种PA类型,准确率达到93.44%,训练速度快于其他类型。基于RF(随机森林)算法的集成分类器系统可以实现较高的识别精度和快速的计算。

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