OpenHAIV: A Framework Towards Practical Open-World Learning
OpenHAIV: A Framework Towards Practical Open-World Learning
Substantial progress has been made in various techniques for open-world recognition. Out-of-distribution (OOD) detection methods can effectively distinguish between known and unknown classes in the data, while incremental learning enables continuous model knowledge updates. However, in open-world scenarios, these approaches still face limitations. Relying solely on OOD detection does not facilitate knowledge updates in the model, and incremental fine-tuning typically requires supervised conditions, which significantly deviate from open-world settings. To address these challenges, this paper proposes OpenHAIV, a novel framework that integrates OOD detection, new class discovery, and incremental continual fine-tuning into a unified pipeline. This framework allows models to autonomously acquire and update knowledge in open-world environments. The proposed framework is available at https://haiv-lab.github.io/openhaiv .
Xiang Xiang、Qinhao Zhou、Zhuo Xu、Jing Ma、Jiaxin Dai、Yifan Liang、Hanlin Li
计算技术、计算机技术
Xiang Xiang,Qinhao Zhou,Zhuo Xu,Jing Ma,Jiaxin Dai,Yifan Liang,Hanlin Li.OpenHAIV: A Framework Towards Practical Open-World Learning[EB/OL].(2025-08-10)[2025-08-24].https://arxiv.org/abs/2508.07270.点此复制
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