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Hierarchical multi-view aggregation network for sensor-based human activity recognition

机译:分层的多视图聚合网络,用于基于传感器的人类活动识别

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摘要

Sensor-based human activity recognition aims at detecting various physical activities performed by people with ubiquitous sensors. Different from existing deep learning-based method which mainly extracting black-box features from the raw sensor data, we propose a hierarchical multi-view aggregation network based on multi-view feature spaces. Specifically, we first construct various views of feature spaces for each individual sensor in terms of white-box features and black-box features. Then our model learns a unified representation for multi-view features by aggregating views in a hierarchical context from the aspect of feature level, position level and modality level. We design three aggregation modules corresponding to each level aggregation respectively. Based on the idea of non-local operation and attention, our fusion method is able to capture the correlation between features and leverage the relationship across different sensor position and modality. We comprehensively evaluate our method on 12 human activity benchmark datasets and the resulting accuracy outperforms the state-of-the-art approaches.
机译:基于传感器的人类活动识别旨在检测具有无处不在的传感器的人执行的各种身体活动。与现有的基于深度学习的主要从原始传感器数据中提取黑匣子特征的方法不同,我们提出了一种基于多视图特征空间的分层多视图聚合网络。具体来说,我们首先根据白盒特征和黑盒特征构造每个传感器的特征空间的各种视图。然后,我们的模型通过从功能级别,位置级别和模态级别方面在层次结构上下文中聚合视图来学习多视图功能的统一表示。我们分别设计了三个聚合模块,分别对应于每个级别的聚合。基于非本地操作和注意力的想法,我们的融合方法能够捕获特征之间的相关性,并利用不同传感器位置和形态之间的关系。我们在12个人类活动基准数据集上对我们的方法进行了全面评估,其结果准确性优于最新方法。

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