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Mobile and Ubiquitous Systems: Computing, Networking and Services. 20th EAI International Conference, MobiQuitous 2023, Melbourne, VIC, Australia, November 14–17, 2023, Proceedings, Part I

Research Article

Cross-User Activity Recognition via Temporal Relation Optimal Transport

Cite
BibTeX Plain Text
  • @INPROCEEDINGS{10.1007/978-3-031-63989-0_18,
        author={Xiaozhou Ye and Kevin I-Kai Wang},
        title={Cross-User Activity Recognition via Temporal Relation Optimal Transport},
        proceedings={Mobile and Ubiquitous Systems: Computing, Networking and Services. 20th EAI International Conference, MobiQuitous 2023, Melbourne, VIC, Australia, November 14--17, 2023, Proceedings, Part I},
        proceedings_a={MOBIQUITOUS},
        year={2024},
        month={7},
        keywords={Human activity recognition Out-of-distribution Domain adaptation Transfer learning Time series classification},
        doi={10.1007/978-3-031-63989-0_18}
    }
    
  • Xiaozhou Ye
    Kevin I-Kai Wang
    Year: 2024
    Cross-User Activity Recognition via Temporal Relation Optimal Transport
    MOBIQUITOUS
    Springer
    DOI: 10.1007/978-3-031-63989-0_18
Xiaozhou Ye1,*, Kevin I-Kai Wang1
  • 1: Department of Electrical, Computer, and Software Engineering
*Contact email: xye685@aucklanduni.ac.nz

Abstract

Current research on human activity recognition (HAR) mainly assumes that training and testing data are drawn from the same distribution to achieve a generalised model, which means all the data are considered to be independent and identically distributed(\displaystyle (i.i.d.) ). In many real-world applications, this assumption does not hold, and collected training and target testing datasets have non-uniform distribution, such as in the case of cross-user HAR. Domain adaptation is a promising approach for cross-user HAR tasks. Existing domain adaptation works based on the assumption that samples in each domain are(\displaystyle i.i.d. )and do not consider the knowledge of temporal relation hidden in time series data for aligning data distribution. This strong assumption of(\displaystyle i.i.d. )may not be suitable for time series-related domain adaptation methods because the samples formed by time series segmentation and feature extraction techniques are only coarse approximations to(\displaystyle i.i.d. )assumption in each domain. In this paper, we propose the temporal relation optimal transport (TROT) method to utilise temporal relation and relax the(\displaystyle i.i.d. )assumption for the samples in each domain for accurate and efficient knowledge transfer. We obtain the temporal relation representation and implement temporal relation alignment of activities via the Hidden Markov model (HMM) and optimal transport (OT) techniques. Besides, a new regularisation term that preserves temporal relation order information for an improved optimal transport mapping is proposed to enhance the domain adaptation performance. Comprehensive experiments are conducted on three public activity recognition datasets (i.e. OPPT, PAMAP2 and DSADS), demonstrating that TROT outperforms other state-of-the-art methods.

Keywords
Human activity recognition Out-of-distribution Domain adaptation Transfer learning Time series classification
Published
2024-07-19
Appears in
SpringerLink
http://dx.doi.org/10.1007/978-3-031-63989-0_18
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