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Towards Human Activity Recognition: A Hierarchical Feature Selection Framework

机译:面向人类活动识别:分层特征选择框架

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摘要

The inherent complexity of human physical activities makes it difficult to accurately recognize activities with wearable sensors. To this end, this paper proposes a hierarchical activity recognition framework and two different feature selection methods to improve the recognition performance. Specifically, according to the characteristics of human activities, predefined activities of interest are organized into a hierarchical tree structure, where each internal node represents different groups of activities and each leaf node represents a specific activity label. Then, the proposed feature selection methods are appropriately integrated to optimize the feature space of each node. Finally, we train corresponding classifiers to distinguish different activity groups and to classify a new unseen sample into one of the leaf-nodes in a top-down fashion to predict its activity label. To evaluate the performance of the proposed framework and feature selection methods, we conduct extensive comparative experiments on publicly available datasets and analyze the model complexity. Experimental results show that the proposed method reduces the dimensionality of original feature space and contributes to enhancement of the overall recognition accuracy. In addition, for feature selection, returning multiple activity-specific feature subsets generally outperforms the case of returning a common subset of features for all activities.
机译:人类体育活动的内在复杂性使得很难通过可穿戴传感器准确识别活动。为此,本文提出了一种层次化的活动识别框架和两种不同的特征选择方法来提高识别性能。具体来说,根据人类活动的特征,将感兴趣的预定义活动组织为分层树结构,其中每个内部节点代表不同的活动组,每个叶节点代表特定的活动标签。然后,将所提出的特征选择方法适当地集成以优化每个节点的特征空间。最后,我们训练相应的分类器来区分不同的活动组,并以自上而下的方式将一个看不见的新样本分类到一个叶节点中,以预测其活动标签。为了评估所提出的框架和特征选择方法的性能,我们对公开的数据集进行了广泛的比较实验,并分析了模型的复杂性。实验结果表明,该方法降低了原始特征空间的维数,有助于提高整体识别精度。另外,对于特征选择,返回多个特定于活动的特征子集通常胜过为所有活动返回共同的特征子集的情况。

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