Panoptic Segmentation
Panoptic segmentation aims to comprehensively understand a scene by simultaneously segmenting and classifying all objects and regions, including both "things" (individual objects) and "stuff" (amorphous regions). Current research focuses on improving accuracy and efficiency, particularly in challenging scenarios like occlusion, dynamic environments, and open-vocabulary settings, often employing transformer-based architectures, mask-based methods, and diffusion models. This task is crucial for various applications, including autonomous driving, robotics, and medical image analysis, driving advancements in both model design and benchmark datasets.
Papers
Video K-Net: A Simple, Strong, and Unified Baseline for Video Segmentation
Xiangtai Li, Wenwei Zhang, Jiangmiao Pang, Kai Chen, Guangliang Cheng, Yunhai Tong, Chen Change Loy
Panoptic-PartFormer: Learning a Unified Model for Panoptic Part Segmentation
Xiangtai Li, Shilin Xu, Yibo Yang, Guangliang Cheng, Yunhai Tong, Dacheng Tao
ConsInstancy: Learning Instance Representations for Semi-Supervised Panoptic Segmentation of Concrete Aggregate Particles
Max Coenen, Tobias Schack, Dries Beyer, Christian Heipke, Michael Haist