Glance Annotation
Glance annotation, a novel data labeling paradigm, focuses on minimizing annotation effort while maximizing model performance in various machine learning tasks, particularly in computer vision and natural language processing. Current research explores efficient algorithms and model architectures, such as those based on transformers and generative adversarial networks, to leverage these sparsely annotated datasets for tasks ranging from object detection and video anomaly detection to multimodal question answering and logical reasoning. This approach holds significant promise for improving the efficiency and scalability of training complex models, particularly in domains with limited labeled data, thereby impacting both research methodologies and real-world applications.
Papers
Look, Learn and Leverage (L$^3$): Mitigating Visual-Domain Shift and Discovering Intrinsic Relations via Symbolic Alignment
Hanchen Xie, Jiageng Zhu, Mahyar Khayatkhoei, Jiazhi Li, Wael AbdAlmageed
Look, Compare, Decide: Alleviating Hallucination in Large Vision-Language Models via Multi-View Multi-Path Reasoning
Xiaoye Qu, Jiashuo Sun, Wei Wei, Yu Cheng