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Deep Spatial–Temporal Model Based Cross-Scene Action Recognition Using Commodity WiFi

机译:基于深度空间模型的基于跨场动作识别的商品WiFi

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摘要

With the popularization of Internet-of-Things (IoT) systems, passive action recognition on channel state information (CSI) has attracted much attention. Most conventional work under the machine-learning framework utilizes handcrafted features (e.g., statistic features) that are unable to sufficiently describe the sequence data and heavily rely on designers' experiences. Therefore, how to automatically learn abundant spatial-temporal information from CSI data is a topic worthy of study. In this article, we propose a deep learning framework that integrates spatial features learned from the convolutional neural network (CNN) into the temporal model multilayer bidirectional long short-term memory (Bi-LSTM). Specifically, CSI streams are segmented into a series of patches, from which spatial features are extracted by our designed CNN structure. Considering long-term dependencies between adjacent sequences, the fully connected layer of CNN for each patch is taken as the Bi-LSTM sequential input to further capture temporal features. Our model is appealing in that it can simultaneously learn temporal dynamics and convolutional perceptual representations. To the best of our knowledge, this is the first work to explore deep spatial-temporal features for CSI-based action recognition. Furthermore, in order to solve the problem that the trained model fully fails with environmental changes, we use the off-the-shelf model as the pretrained model and fine-tune it in the new scenario. The transfer method is able to realize cross-scene action recognition with low computational consumption and satisfactory accuracy. We carry out experiments on indoor data and the experimental results validate the effectiveness of our algorithm.
机译:随着物联网(物联网)系统的推广,信道状态信息(CSI)上的被动动作识别引起了很多关注。机器学习框架下的大多数传统工作都利用了无法充分描述序列数据的手工制作功能(例如,统计功能),并严重依赖设计人员的体验。因此,如何自动学习来自CSI数据的丰富的空间信息是一个值得研究的主题。在本文中,我们提出了一个深入的学习框架,它将从卷积神经网络(CNN)学到的空间特征集成到时间模型多层双向长期内记忆(Bi-LSTM)中。具体地,CSI流被分段为一系列贴片,由我们设计的CNN结构提取的空间特征。考虑相邻序列之间的长期依赖性,将每个贴片的CNN的完全连接层作为BI-LSTM顺序输入,以进一步捕获时间特征。我们的模型在吸引人的吸引力中,它可以同时学习时间动态和卷积的感知表示。据我们所知,这是第一个探索基于CSI的动作识别的深空间功能的工作。此外,为了解决训练模型与环境变化完全失败的问题,我们将现成的模型作为预先预订的模型,并在新的场景中进行微调。传送方法能够实现具有低计算消耗和令人满意的精度的跨场动作识别。我们对室内数据进行实验,实验结果验证了算法的有效性。

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