Image Segmentation
Image segmentation, the process of partitioning an image into meaningful regions, aims to accurately delineate objects or areas of interest within a visual scene. Current research heavily emphasizes leveraging foundation models like Segment Anything Model (SAM) and its variants, often incorporating adaptations such as dual-branch architectures or efficient adapters to improve performance on specific domains (e.g., medical imaging, remote sensing) and address limitations like memory consumption. These advancements are significantly impacting diverse fields, from medical diagnosis and industrial inspection to autonomous driving and cultural heritage preservation, by enabling more accurate, efficient, and automated image analysis.
Papers
Photonic Accelerators for Image Segmentation in Autonomous Driving and Defect Detection
Lakshmi Nair, David Widemann, Brad Turcott, Nick Moore, Alexandra Wleklinski, Darius Bunandar, Ioannis Papavasileiou, Shihu Wang, Eric Logan
SA2-Net: Scale-aware Attention Network for Microscopic Image Segmentation
Mustansar Fiaz, Moein Heidari, Rao Muhammad Anwer, Hisham Cholakkal
Voting Network for Contour Levee Farmland Segmentation and Classification
Abolfazl Meyarian, Xiaohui Yuan
A Geometric Flow Approach for Segmentation of Images with Inhomongeneous Intensity and Missing Boundaries
Paramjyoti Mohapatra, Richard Lartey, Weihong Guo, Michael Judkovich, Xiaojuan Li
Intelligent Debris Mass Estimation Model for Autonomous Underwater Vehicle
Mohana Sri S, Swethaa S, Aouthithiye Barathwaj SR Y, Sai Ganesh CS