English

Domain-Aware Continual Zero-Shot Learning

Computer Vision and Pattern Recognition 2024-03-13 v3 Machine Learning

Abstract

Modern visual systems have a wide range of potential applications in vision tasks for natural science research, such as aiding in species discovery, monitoring animals in the wild, and so on. However, real-world vision tasks may experience changes in environmental conditions, leading to shifts in how captured images are presented. To address this issue, we introduce Domain-Aware Continual Zero-Shot Learning (DACZSL), a task to recognize images of unseen categories in continuously changing domains. Accordingly, we propose a Domain-Invariant Network (DIN) to learn factorized features for shifting domains and improved textual representation for unseen classes. DIN continually learns a global shared network for domain-invariant and task-invariant features, and per-task private networks for task-specific features. Furthermore, we enhance the dual network with class-wise learnable prompts to improve class-level text representation, thereby improving zero-shot prediction of future unseen classes. To evaluate DACZSL, we introduce two benchmarks, DomainNet-CZSL and iWildCam-CZSL. Our results show that DIN significantly outperforms existing baselines by over 5% in harmonic accuracy and over 1% in backward transfer and achieves a new SoTA.

Keywords

Cite

@article{arxiv.2112.12989,
  title  = {Domain-Aware Continual Zero-Shot Learning},
  author = {Kai Yi and Paul Janson and Wenxuan Zhang and Mohamed Elhoseiny},
  journal= {arXiv preprint arXiv:2112.12989},
  year   = {2024}
}
R2 v1 2026-06-24T08:30:48.576Z