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Category Adaptation Meets Projected Distillation in Generalized Continual Category Discovery

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arxiv 2308.12112 v4 pith:K4FWK4JE submitted 2023-08-23 cs.LG cs.CV

Category Adaptation Meets Projected Distillation in Generalized Continual Category Discovery

classification cs.LG cs.CV
keywords categorydistillationadaptationcampcategorieslearningcontinualdiscovery
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Generalized Continual Category Discovery (GCCD) tackles learning from sequentially arriving, partially labeled datasets while uncovering new categories. Traditional methods depend on feature distillation to prevent forgetting the old knowledge. However, this strategy restricts the model's ability to adapt and effectively distinguish new categories. To address this, we introduce a novel technique integrating a learnable projector with feature distillation, thus enhancing model adaptability without sacrificing past knowledge. The resulting distribution shift of the previously learned categories is mitigated with the auxiliary category adaptation network. We demonstrate that while each component offers modest benefits individually, their combination - dubbed CAMP (Category Adaptation Meets Projected distillation) - significantly improves the balance between learning new information and retaining old. CAMP exhibits superior performance across several GCCD and Class Incremental Learning scenarios. The code is available at https://github.com/grypesc/CAMP.

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