Open World
Open-world research focuses on developing AI systems capable of operating in unpredictable, dynamic environments with unknown objects and situations, unlike traditional closed-world systems with predefined constraints. Current research emphasizes robust generalization and zero-shot capabilities, often employing vision-language models (VLMs), large language models (LLMs), and novel algorithms like contrastive learning and self-supervised learning to handle unseen data and concepts. This work is crucial for advancing AI's real-world applicability, particularly in robotics, autonomous driving, and other safety-critical domains requiring adaptability and resilience to unexpected events.
Papers
Open-CRB: Towards Open World Active Learning for 3D Object Detection
Zhuoxiao Chen, Yadan Luo, Zixin Wang, Zijian Wang, Xin Yu, Zi Huang
Bongard-OpenWorld: Few-Shot Reasoning for Free-form Visual Concepts in the Real World
Rujie Wu, Xiaojian Ma, Zhenliang Zhang, Wei Wang, Qing Li, Song-Chun Zhu, Yizhou Wang
3D Indoor Instance Segmentation in an Open-World
Mohamed El Amine Boudjoghra, Salwa K. Al Khatib, Jean Lahoud, Hisham Cholakkal, Rao Muhammad Anwer, Salman Khan, Fahad Khan
Tuning Multi-mode Token-level Prompt Alignment across Modalities
Dongsheng Wang, Miaoge Li, Xinyang Liu, MingSheng Xu, Bo Chen, Hanwang Zhang