Auto Seed Vl2 -

[4] Thengane, V., et al. (2023). Continual-CLIP: Fine-tuning CLIP for continual learning. CVPR Workshop.

: Auto-Seed VL2 outperforms all baselines, including ER-VLM with 10× more memory, and beats generative replay by over 13 points on average. The BLEU-4 score on C→F is particularly striking, indicating that generated seeds capture caption semantics well. 6.2 Ablation Study Removing components from Auto-Seed VL2 on C→R: auto seed vl2

Auto-Seed VL2 maintains a set of auto-generated seeds ( \mathcalS ) that grows slowly over tasks. Auto-Seed VL2 operates in three phases per task: (1) Seed replay, (2) Online adaptation, (3) Seed update. 4.1 Overall Architecture [4] Thengane, V