Semi-Supervised Contrastive Learning for Human Activity Recognition

2021 
Recent developments in deep learning have motivated the use of deep neural networks in mobile sensing applications. Human Activity Recognition (HAR), as one of the most important mobile sensing applications, has enjoyed great success due to the utilization of deep neural networks. Motivated by the success of self-supervised learning frameworks in computer vision and natural language processing, self-supervised models have been proposed to efficiently leverage massive unlabeled data and reduce the labeling burden of HAR applications. Current approaches use self-supervised pre-training (with unlabeled data) followed by downstream training (with labeled data). However, we claim that labeled data can still help in the pre-training process and propose SemiC-HAR, a Semi-supervised Contrastive learning framework for HAR. SemiC-HAR efficiently uses both of the labeled and unlabeled data during the pre-training process and combines the advantages of supervised and self-supervised contrastive learning frameworks. We evaluate SemiC-HAR on six HAR datasets with multiple sensing signals and show comparable performance to previous supervised and semi-supervised models seen at much lower fractions of labeled data.
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