Segmentation Result
Segmentation results, the output of partitioning images into meaningful regions, are central to many image analysis tasks, aiming for accurate and efficient delineation of objects or areas of interest. Current research emphasizes improving segmentation accuracy and efficiency across diverse applications, focusing on deep learning models like U-Net and its variants, Transformers, and generative models such as Stable Diffusion and the Segment Anything Model (SAM), often incorporating techniques like parameter-efficient fine-tuning and weakly supervised learning. These advancements have significant implications for various fields, including medical image analysis (e.g., tumor detection, organ segmentation), industrial quality control (e.g., defect detection), and remote sensing (e.g., building extraction), enabling automation and improved decision-making.
Papers
3D PETCT Tumor Lesion Segmentation via GCN Refinement
Hengzhi Xue, Qingqing Fang, Yudong Yao, Yueyang Teng
Joint Learning of Blind Super-Resolution and Crack Segmentation for Realistic Degraded Images
Yuki Kondo, Norimichi Ukita
On-Device Unsupervised Image Segmentation
Junhuan Yang, Yi Sheng, Yuzhou Zhang, Weiwen Jiang, Lei Yang