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COCOA: Cross Modality Contrastive Learning for Sensor Data

About

Self-Supervised Learning (SSL) is a new paradigm for learning discriminative representations without labelled 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 labelled data.

Shohreh Deldari, Hao Xue, Aaqib Saeed, Daniel V. Smith, Flora D. Salim• 2022

Related benchmarks

TaskDatasetResultRank
Human Activity RecognitionREALDISP
F197.42
94
Human Activity RecognitionUP-Fall
F1 Score91.5
78
Human Activity RecognitionDailySport
F1 Score90.68
78
Physical Activity RecognitionPAMAP2
Acc76.89
55
Human Activity RecognitionPAMAP2
Accuracy71.5
54
Sleep Stage ClassificationSHHS (test)
Accuracy73.12
54
Human Activity RecognitionRealWorld-HAR
Accuracy88.92
50
Hypopnea DetectionSHHS (test)
Accuracy78.76
38
Apnea DetectionSHHS (test)
ACC96.81
38
Human Activity RecognitionCMDFall
F1 Score79.84
36
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