IDRL: An Individual-Aware Multimodal Depression-Related Representation Learning Framework for Depression Diagnosis
arXiv cs.CV / 3/13/2026
💬 OpinionModels & Research
Key Points
- The article introduces IDRL, a multimodal depression diagnosis framework that addresses inter-modal inconsistency and individual differences in depressive presentations.
- IDRL disentangles multimodal representations into modality-common, modality-specific, and depression-unrelated spaces to improve alignment and suppress irrelevant information.
- It also proposes an individual-aware modality-fusion (IAF) module that dynamically weights features based on their predictive significance for each individual.
- Extensive experiments show that IDRL achieves superior and robust performance for multimodal depression detection.
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