Segmentation Network
Segmentation networks are artificial intelligence models designed to partition images into meaningful regions, identifying and delineating objects or features of interest. Current research emphasizes improving accuracy and robustness, particularly in challenging scenarios like medical imaging with subtle features or class imbalances, often employing architectures like U-Net and its variants, incorporating attention mechanisms, and leveraging techniques such as knowledge distillation and transfer learning. These advancements have significant implications across diverse fields, including medical diagnosis, autonomous driving, and remote sensing, by enabling automated analysis of complex visual data and facilitating more efficient and accurate decision-making.
Papers
Novel Approaches for ML-Assisted Particle Track Reconstruction and Hit Clustering
Uraz Odyurt, Nadezhda Dobreva, Zef Wolffs, Yue Zhao, Antonio Ferrer Sánchez, Roberto Ruiz de Austri Bazan, José D. Martín-Guerrero, Ana-Lucia Varbanescu, Sascha Caron
DSU-Net: Dynamic Snake U-Net for 2-D Seismic First Break Picking
Hongtao Wang, Rongyu Feng, Liangyi Wu, Mutian Liu, Yinuo Cui, Chunxia Zhang, Zhenbo Guo