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High-Performance Self-Supervised Learning by Joint Training of Flow Matching

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Diffusion models can learn rich representations during data generation, showing potential for Self-Supervised Learning (SSL), but they face a trade-off between generative quality and discriminative performance. Their iterative sampling also incurs substantial computational and energy costs, hindering industrial and edge AI applications. To address these issues, we propose the Flow Matching-based Foundation Model (FlowFM), which jointly trains a representation encoder and a conditional flow matching generator. This decoupled design achieves both high-fidelity generation and effective recognition. By using flow matching to learn a simpler velocity field, FlowFM accelerates and stabilizes training, improving its efficiency for representation learning. Experiments on wearable sensor data show FlowFM reduces training time by 50.4\% compared to a diffusion-based approach. On downstream tasks, FlowFM surpassed the state-of-the-art SSL method (SSL-Wearables) on all five datasets while achieving up to a 51.0x inference speedup and maintaining high generative quality. The implementation code is available at https://github.com/Okita-Laboratory/jointOptimizationFlowMatching.

Kosuke Ukita, Tsuyoshi Okita• 2025

Related benchmarks

TaskDatasetResultRank
Human Activity RecognitionPAMAP2
F1 Score88.77
26
Human Activity RecognitionWISDM
Macro F189.1
23
Human Activity RecognitionOpportunity
Macro F179.25
23
Human Activity RecognitionRealWorld
F192.11
14
Human Activity RecognitionADL
F1 Score92.86
14
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