CVAug 12, 2025

AME: Aligned Manifold Entropy for Robust Vision-Language Distillation

arXiv:2508.08644v12 citationsh-index: 2
Originality Incremental advance
AI Analysis

This addresses the challenge of collecting large-scale task-specific data for robust vision-language distillation, though it appears incremental as an enhancement to existing frameworks.

The paper tackles the problem of robust vision-language knowledge distillation under low-data regimes by proposing Aligned Manifold Entropy (AME), which applies entropy minimization over a reconfigured shared manifold to achieve superior generalization performance across diverse downstream tasks.

Knowledge distillation is a long-established technique for knowledge transfer, and has regained attention in the context of the recent emergence of large vision-language models (VLMs). However, vision-language knowledge distillation often requires sufficient training data to achieve robust generalization on amples with ambiguous or boundary-adjacent representations, which are associated with high predictive uncertainty. Critically, collecting such large-scale, task-specific data for training is often impractical in real-world scenarios. To address this major challenge arising from the entanglement of uncertainty and cross-modal feature representation, we propose Aligned Manifold Entropy for Robust Vision-Language Distillation (AME), aiming to achieve robust generalization under real-world conditions. AME applies entropy minimization over a reconfigured shared manifold, where multi-modal data (i.e., image and text) are bridged through a pair of projection functions, conducive to structural compression for cross-modal feature representations. This enables robust knowledge distillation under low-data regimes, while requiring no architectural modifications to the backbone. As a result, it can serve as a plug-and-play module compatible with a wide range of vision-language distillation frameworks. Notably, our theoretical analysis reveals that integrating knowledge distillation with entropy minimization over the shared manifold leads to a tighter generalization error bound. Extensive experiments across diverse distillation architectures and training settings demonstrate that AME consistently facilitates robust knowledge distillation, resulting in superior generalization performance across a wide spectrum of downstream tasks.

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