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Motion Primitive Forests for Human Activity Recognition Using Wearable Sensors

机译:使用可穿戴传感器的人类活动识别运动原始森林

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Human activity recognition is important in many applications such as fitness logging, pervasive healthcare, near-emergency warning, and social networking. Using body-worn sensors, these applications detect activities of the users to understand the context and provide them appropriate assistance. For accurate recognition, it is crucial to design appropriate feature representation of sensor data. In this paper, we propose a new type of motion features: motion primitive forests, which are randomized ensembles of decision trees that act on original local features by clustering them to form motion primitives (or words). The bags of these features, which accumulate histograms of the resulting motion primitives over each data frame, are then used to build activity models. We experimentally validated the effectiveness of the proposed method on accelerometer data on three benchmark datasets. On all three datasets, the proposed motion primitive forests provided substantially higher accuracy than existing state-of-the-art methods, and were much faster in both training and prediction, compared with k-means feature learning. In addition, the method showed stable results over different types of original local features, indicating the ability of random forests in selecting relevant local features.
机译:人类活动识别在许多应用中都很重要,例如健身记录,普适医疗保健,紧急情况预警和社交网络。这些应用程序使用穿戴式传感器,检测用户的活动以了解背景并为其提供适当的帮助。为了准确识别,设计传感器数据的适当特征表示至关重要。在本文中,我们提出了一种新型的运动特征:运动原语森林,它们是决策树的随机集合,通过将它们聚类以形成运动原语(或单词),从而作用于原始局部特征。这些功能的袋子将在每个数据帧上累积生成的运动图元的直方图,然后用于构建活动模型。我们通过实验验证了该方法对三个基准数据集上的加速度计数据的有效性。在所有三个数据集上,与k均值特征学习相比,拟议的运动原始森林提供的精度远高于现有的最新技术,并且在训练和预测方面均快得多。此外,该方法在不同类型的原始局部特征上显示出稳定的结果,表明随机森林选择相关局部特征的能力。

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