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A hybrid deep convolutional and recurrent neural network for complex activity recognition using multimodal sensors

机译:混合深度卷积神经网络和递归神经网络用于使用多模式传感器进行复杂活动识别

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Complex activities refer to users' activities performed in their daily lives (e.g., having dinner, shopping, etc.). Complex activity recognition is a valuable issue in wearable and mobile computing. The time-series sensory data from multimodal sensors have sophisticated relationships to characterize the complex activities (e.g., intra-sensor relationships, inter-sensor relationships, and temporal relationships), making the traditional methods based on manually designed features ineffective. To this end, we propose HConvRNN, an end-to-end deep neural network for complex activity recognition using multimodal sensors by integrating convolutional neural network (CNN) and recurrent neural network (RNN). To be specific, it uses a hierarchical CNN to exploit the intra-sensor relationships among similar sensors and merge intra-sensor relationships of different sensor modalities into inter-sensor relationships, and uses a RNN to model the temporal relationships of signal dynamics. The experiments based on real-world datasets show that HConvRNN outperforms the existing complex activity recognition methods. (C) 2019 Published by Elsevier B.V.
机译:复杂活动是指用户在日常生活中进行的活动(例如,吃晚饭,购物等)。复杂活动识别是可穿戴和移动计算中的重要问题。来自多模式传感器的时间序列感官数据具有复杂的关系以表征复杂的活动(例如,传感器内关系,传感器间关系和时间关系),这使得基于手动设计功能的传统方法无效。为此,我们提出了HConvRNN,这是一种通过集成卷积神经网络(CNN)和递归神经网络(RNN)使用多模式传感器进行复杂活动识别的端到端深度神经网络。具体而言,它使用分层CNN来利用相似传感器之间的传感器内关系,并将不同传感器模态的传感器内关系合并为传感器间关系,并使用RNN建模信号动力学的时间关系。基于实际数据集的实验表明,HConvRNN优于现有的复杂活动识别方法。 (C)2019由Elsevier B.V.发布

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