Samenvatting
Self-Supervised Learning (SSL) is a new paradigm for learning discriminative representations without labeled data, and has reached comparable or even state-of-the-art results in comparison to supervised counterparts. Contrastive Learning (CL) is one of the most well-known approaches in SSL that attempts to learn general, informative representations of data. CL methods have been mostly developed for applications in computer vision and natural language processing where only a single sensor modality is used. A majority of pervasive computing applications, however, exploit data from a range of different sensor modalities. While existing CL methods are limited to learning from one or two data sources, we propose COCOA (Cross mOdality COntrastive leArning), a self-supervised model that employs a novel objective function to learn quality representations from multisensor data by computing the cross-correlation between different data modalities and minimizing the similarity between irrelevant instances. We evaluate the effectiveness of COCOA against eight recently introduced state-of-the-art self-supervised models, and two supervised baselines across five public datasets. We show that COCOA achieves superior classification performance to all other approaches. Also, COCOA is far more label-efficient than the other baselines including the fully supervised model using only one-tenth of available labeled data.
Originele taal-2 | Engels |
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Artikelnummer | 108 |
Pagina's (van-tot) | 1-28 |
Aantal pagina's | 28 |
Tijdschrift | Proceedings of the ACM on Interactive, Mobile, Wearable and Ubiquitous Technologies |
Volume | 6 |
Nummer van het tijdschrift | 3 |
DOI's | |
Status | Gepubliceerd - sep. 2022 |
Extern gepubliceerd | Ja |
Bibliografische nota
Publisher Copyright:© 2022 ACM.
Financiering
Authors would like to acknowledge the support from CSIRO Data61 Scholarship program (Grant number 500588), RMIT Research International Tuition Fee Scholarship and Australian Research Council (ARC) Discovery Project DP190101485.
Financiers | Financiernummer |
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Australian Research Council | DP190101485 |
Commonwealth Scientific and Industrial Research Organisation | 500588 |
Royal Melbourne Institute of Technology University |