4.8 Article

A Multidimensional Parallel Convolutional Connected Network Based on Multisource and Multimodal Sensor Data for Human Activity Recognition

Journal

IEEE INTERNET OF THINGS JOURNAL
Volume 10, Issue 16, Pages 14873-14885

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/JIOT.2023.3265937

Keywords

Feature extraction; Internet of Things; Deep learning; Monitoring; Data mining; Convolutional neural networks; Wearable computers; human activity recognition (HAR); leave-one-subject-out (LOSO) cross-validation (CV); multisource and multimodal sensor (MMS) data; squeeze-and-excitation (SE) blocks; tenfold CV

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In this study, a deep learning network for HAR based on MMS data is proposed, which fully utilizes the advantages of multidimensional convolutional kernels. Multiscale residual convolutional squeeze-and-excitation modules are also introduced to increase the diversity of feature information. The proposed network achieves high FW-scores on the PAMAP2 and OPPORTUNITY data sets using both tenfold and LOSO cross-validations.
Human activity recognition (HAR) technology based on wearables has received increasing attention in recent years. The traditional methods have used hand-crafted features to recognize human activities, resulting in shallow feature extraction. With the development of deep learning, an increasing number of researchers have focused on studying deep learning methods. To achieve higher recognition accuracy, the majority of the current HAR research involves multisource and multimodal sensors (MMSs) data. However, due to the limitations in the receptive fields of single-dimensional convolutional kernels, these networks are still infeasible for extracting spatiotemporal features. In this study, a multidimensional parallel convolutional connected (MPCC) deep learning network based on MMS data for HAR is proposed that fully utilizes the advantages of multidimensional convolutional kernels. Moreover, multiscale residual convolutional squeeze-and-excitation (MRCSE) modules are proposed to enrich the diversity of feature information by combining squeeze and-excitation (SE) blocks. A daily home activity (DHA) data set is constructed based on the requirements for HAR in certain scenarios, such as smart home, and we conduct experiments on the optimal combination of sensor locations on the DHA data set according to a weighted F1 (FW)-score. Both tenfold and leave-one-subject-out (LOSO) cross-validations (CVs) are used to evaluate the performance of the proposed network. The MPCCMRCSE network achieves FW-scores of 98.33% and 95.42% on the physical activity monitoring for aging people (PAMAP2) and OPPORTUNITY data sets using tenfold CVs, respectively, and achieves FW-scores of 81.47% on the PAMAP2 when applying an LOSO CV.

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