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Multi-Cache Enhanced Prototype Learning for Test-Time Generalization of Vision-Language Models
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本文提出了一种名为MCP的多缓存增强原型测试时自适应方法,通过引入三种缓存(熵缓存、对齐缓存和负缓存)来提高模型在未知测试分布上的性能,并通过实验证明了其优越性。

arXiv:2508.01225v1 Announce Type: cross Abstract: In zero-shot setting, test-time adaptation adjusts pre-trained models using unlabeled data from the test phase to enhance performance on unknown test distributions. Existing cache-enhanced TTA methods rely on a low-entropy criterion to select samples for prototype construction, assuming intra-class compactness. However, low-entropy samples may be unreliable under distribution shifts, and the resulting prototypes may not ensure compact intra-class distributions. This study identifies a positive correlation between cache-enhanced performance and intra-class compactness. Based on this observation, we propose a Multi-Cache enhanced Prototype-based Test-Time Adaptation (MCP) featuring three caches: an entropy cache for initializing prototype representations with low-entropy samples, an align cache for integrating visual and textual information to achieve compact intra-class distributions, and a negative cache for prediction calibration using high-entropy samples. We further developed MCP++, a framework incorporating cross-modal prototype alignment and residual learning, introducing prototype residual fine-tuning. Comparative and ablation experiments across 15 downstream tasks demonstrate that the proposed method and framework achieve state-of-the-art generalization performance.

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测试时自适应 原型方法 多缓存技术
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