Cross-user activity recognition via temporal relation optimal transport
Xiaozhou Ye, Kevin I-Kai Wang

TL;DR
This paper introduces TROT, a novel domain adaptation method for cross-user human activity recognition that leverages temporal relations in time series data using optimal transport and HMM, outperforming existing methods.
Contribution
The paper proposes TROT, a new approach that incorporates temporal relation information into domain adaptation for HAR, relaxing the i.i.d. assumption and improving transfer accuracy.
Findings
TROT outperforms state-of-the-art methods on three HAR datasets.
Incorporating temporal relations improves domain adaptation performance.
The regularisation term preserves temporal order, enhancing mapping accuracy.
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 . 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 and do not consider the knowledge of temporal relation hidden in time series data for aligning data distribution. This strong assumption of may not be suitable for time series-related domain adaptation methods because the…
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Taxonomy
TopicsContext-Aware Activity Recognition Systems
