AI RESEARCH
Prototype Perturbation for Relaxing Alignment Constraints in Backward-Compatible Learning
arXiv CS.CV
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ArXi:2503.14824v2 Announce Type: replace The traditional paradigm to update retrieval models requires re-computing the embeddings of the gallery data, a time-consuming and computationally intensive process known as backfilling. To circumvent backfilling, Backward-Compatible Learning (BCL) has been widely explored, which aims to train a new model compatible with the old one. Many previous works focus on effectively aligning the embeddings of the new model with those of the old one to enhance the backward-compatibility.