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MU-MAE: Multimodal Masked Autoencoders-Based One-Shot Learning

Computer Vision and Pattern Recognition 2024-08-09 v1 Multimedia

Abstract

With the exponential growth of multimedia data, leveraging multimodal sensors presents a promising approach for improving accuracy in human activity recognition. Nevertheless, accurately identifying these activities using both video data and wearable sensor data presents challenges due to the labor-intensive data annotation, and reliance on external pretrained models or additional data. To address these challenges, we introduce Multimodal Masked Autoencoders-Based One-Shot Learning (Mu-MAE). Mu-MAE integrates a multimodal masked autoencoder with a synchronized masking strategy tailored for wearable sensors. This masking strategy compels the networks to capture more meaningful spatiotemporal features, which enables effective self-supervised pretraining without the need for external data. Furthermore, Mu-MAE leverages the representation extracted from multimodal masked autoencoders as prior information input to a cross-attention multimodal fusion layer. This fusion layer emphasizes spatiotemporal features requiring attention across different modalities while highlighting differences from other classes, aiding in the classification of various classes in metric-based one-shot learning. Comprehensive evaluations on MMAct one-shot classification show that Mu-MAE outperforms all the evaluated approaches, achieving up to an 80.17% accuracy for five-way one-shot multimodal classification, without the use of additional data.

Keywords

Cite

@article{arxiv.2408.04243,
  title  = {MU-MAE: Multimodal Masked Autoencoders-Based One-Shot Learning},
  author = {Rex Liu and Xin Liu},
  journal= {arXiv preprint arXiv:2408.04243},
  year   = {2024}
}

Comments

IEEE MIPR 2024

R2 v1 2026-06-28T18:07:21.574Z