Point Annotation
Point annotation, a weakly supervised learning paradigm, aims to reduce the substantial cost and effort associated with fully annotated datasets by using only sparse point labels for training machine learning models, primarily in image and video segmentation and object detection tasks. Current research focuses on developing novel algorithms and model architectures, such as transformer networks and autoencoders, to effectively leverage these sparse annotations, often incorporating techniques like contrastive learning, pseudo-label generation, and consistency regularization to improve performance. This approach holds significant promise for accelerating the development of AI models in various fields, particularly those with limited labeled data, such as medical image analysis and remote sensing.
Papers
Heatmap Regression for Lesion Detection using Pointwise Annotations
Chelsea Myers-Colet, Julien Schroeter, Douglas L. Arnold, Tal Arbel
PA-Seg: Learning from Point Annotations for 3D Medical Image Segmentation using Contextual Regularization and Cross Knowledge Distillation
Shuwei Zhai, Guotai Wang, Xiangde Luo, Qiang Yue, Kang Li, Shaoting Zhang
Fast and Robust Ground Surface Estimation from LIDAR Measurements using Uniform B-Splines
Sascha Wirges, Kevin Rösch, Frank Bieder, Christoph Stiller
Improving Lidar-Based Semantic Segmentation of Top-View Grid Maps by Learning Features in Complementary Representations
Frank Bieder, Maximilian Link, Simon Romanski, Haohao Hu, Christoph Stiller