4.6 Article

Semi-Supervised Adversarial Auto-Encoder to Expedite Human Activity Recognition

期刊

SENSORS
卷 23, 期 2, 页码 -

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MDPI
DOI: 10.3390/s23020683

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semi-supervised; auto-encoder; human activity recognition; adversarial learning

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The study focuses on classifying human activities and inferring human behavior using modern sensing technology. However, the issue of domain adaptation for inertial sensing-based human activity recognition is still challenging. The requirement of labeled training data for adapting classifiers to new individuals or devices is a significant barrier. We propose a semi-supervised HAR method that improves reconstruction and generation without changes to a pre-trained classifier, achieving competitive improvement in handling new and unlabeled activity.
The study of human activity recognition concentrates on classifying human activities and the inference of human behavior using modern sensing technology. However, the issue of domain adaptation for inertial sensing-based human activity recognition (HAR) is still burdensome. The existing requirement of labeled training data for adapting such classifiers to every new person, device, or on-body location is a significant barrier to the widespread adoption of HAR-based applications, making this a challenge of high practical importance. We propose the semi-supervised HAR method to improve reconstruction and generation. It executes proper adaptation with unlabeled data without changes to a pre-trained HAR classifier. Our approach decouples VAE with adversarial learning to ensure robust classifier operation, without newly labeled training data, under changes to the individual activity and the on-body sensor position. Our proposed framework shows the empirical results using the publicly available benchmark dataset compared to state-of-art baselines, achieving competitive improvement for handling new and unlabeled activity. The result demonstrates SAA has achieved a 5% improvement in classification score compared to the existing HAR platform.

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