2024
DOI: 10.1007/s11263-024-01998-9
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Relative Norm Alignment for Tackling Domain Shift in Deep Multi-modal Classification

Mirco Planamente,
Chiara Plizzari,
Simone Alberto Peirone
et al.

Abstract: Multi-modal learning has gained significant attention due to its ability to enhance machine learning algorithms. However, it brings challenges related to modality heterogeneity and domain shift. In this work, we address these challenges by proposing a new approach called Relative Norm Alignment (RNA) loss. RNA loss exploits the observation that variations in marginal distributions between modalities manifest as discrepancies in their mean feature norms, and rebalances feature norms across domains, modalities, … Show more

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