Cross-Domain HAR: Few Shot Transfer Learning for Human Activity Recognition
Megha Thukral, Harish Haresamudram, Thomas Ploetz

TL;DR
This paper introduces a novel transfer learning framework for human activity recognition that effectively leverages limited labeled data across different sensor domains, improving recognition accuracy in real-world scenarios.
Contribution
The paper proposes Cross-Domain HAR, a new teacher-student self-training transfer learning method that bridges domain gaps and enhances few-shot activity recognition performance.
Findings
Effective transfer learning across sensor domains.
Improved accuracy with limited labeled data.
Robust performance on benchmark datasets.
Abstract
The ubiquitous availability of smartphones and smartwatches with integrated inertial measurement units (IMUs) enables straightforward capturing of human activities. For specific applications of sensor based human activity recognition (HAR), however, logistical challenges and burgeoning costs render especially the ground truth annotation of such data a difficult endeavor, resulting in limited scale and diversity of datasets. Transfer learning, i.e., leveraging publicly available labeled datasets to first learn useful representations that can then be fine-tuned using limited amounts of labeled data from a target domain, can alleviate some of the performance issues of contemporary HAR systems. Yet they can fail when the differences between source and target conditions are too large and/ or only few samples from a target application domain are available, each of which are typical challenges…
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Taxonomy
TopicsContext-Aware Activity Recognition Systems · Human Pose and Action Recognition · Anomaly Detection Techniques and Applications
