论文标题
火星:多域深度学习模型的混合虚拟和真正的可穿戴传感器,用于人类活动识别
MARS: Mixed Virtual and Real Wearable Sensors for Human Activity Recognition with Multi-Domain Deep Learning Model
论文作者
论文摘要
随着物联网(IoT)的快速发展,使用可穿戴惯性测量单元(IMU)的人类活动识别(HAR)成为许多研究领域的一种有前途的技术。最近,基于深度学习的方法铺平了一种理解和执行HAR系统中复杂数据的新方法。但是,这些方法的性能主要基于收集数据的质量和数量。在本文中,我们创新地建议建立一个基于虚拟IMU的大数据库,然后通过引入由三个技术零件组成的多域深度学习框架来解决技术问题。在第一部分中,我们建议从半监督形式的混合卷积神经网络(CNN)中学习与混合卷积神经网络(CNN)的单帧人活动。在第二部分中,提取的数据特征是根据不确定性意识一致性的原理融合的,从而通过加权特征的重要性来降低不确定性。转移学习是根据新发布的运动捕获档案作为表面形状(AMASS)数据集进行的,其中包含丰富的合成人类姿势,从而增强了训练数据集的多样性和多样性,并且对所提出的方法中的训练过程和特征传递过程有益。所提出的方法的效率和有效性已在实际的深惯性姿势(DIP)数据集中证明。实验结果表明,所提出的方法可以在一些迭代中出奇地融合,并且表现优于所有竞争方法。
Together with the rapid development of the Internet of Things (IoT), human activity recognition (HAR) using wearable Inertial Measurement Units (IMUs) becomes a promising technology for many research areas. Recently, deep learning-based methods pave a new way of understanding and performing analysis of the complex data in the HAR system. However, the performance of these methods is mostly based on the quality and quantity of the collected data. In this paper, we innovatively propose to build a large database based on virtual IMUs and then address technical issues by introducing a multiple-domain deep learning framework consisting of three technical parts. In the first part, we propose to learn the single-frame human activity from the noisy IMU data with hybrid convolutional neural networks (CNNs) in the semi-supervised form. For the second part, the extracted data features are fused according to the principle of uncertainty-aware consistency, which reduces the uncertainty by weighting the importance of the features. The transfer learning is performed in the last part based on the newly released Archive of Motion Capture as Surface Shapes (AMASS) dataset, containing abundant synthetic human poses, which enhances the variety and diversity of the training dataset and is beneficial for the process of training and feature transfer in the proposed method. The efficiency and effectiveness of the proposed method have been demonstrated in the real deep inertial poser (DIP) dataset. The experimental results show that the proposed methods can surprisingly converge within a few iterations and outperform all competing methods.