Level Supervision
Level supervision in machine learning focuses on training models with varying degrees of labeled data, ranging from full annotations to only image- or video-level labels. Current research emphasizes developing techniques to effectively leverage these weaker supervision signals, often employing pseudo-labeling, contrastive learning, and multi-task learning within architectures like neural radiance fields, transformers, and convolutional neural networks. This area is significant because it allows for training powerful models with less expensive and more readily available data, impacting diverse applications such as video analysis, medical image segmentation, and 3D reconstruction.
Papers
Improving Long-tailed Object Detection with Image-Level Supervision by Multi-Task Collaborative Learning
Bo Li, Yongqiang Yao, Jingru Tan, Xin Lu, Fengwei Yu, Ye Luo, Jianwei Lu
OPERA: Omni-Supervised Representation Learning with Hierarchical Supervisions
Chengkun Wang, Wenzhao Zheng, Zheng Zhu, Jie Zhou, Jiwen Lu