Segmentation Based Approach
Segmentation-based approaches aim to partition images into meaningful regions, facilitating analysis and interpretation across diverse fields. Current research emphasizes the development and application of advanced deep learning architectures, including U-Net variants, transformers (like Mamba), and foundation models (like SAM), often combined with innovative loss functions and data augmentation techniques to address challenges such as class imbalance and limited annotated data. These methods are proving impactful in various applications, from medical image analysis (e.g., tumor detection, organ segmentation) and remote sensing (e.g., crop field mapping, flood detection) to other domains requiring precise object delineation. The ongoing focus is on improving accuracy, efficiency, and explainability, particularly in scenarios with scarce or heterogeneous data.
Papers
WSESeg: Introducing a Dataset for the Segmentation of Winter Sports Equipment with a Baseline for Interactive Segmentation
Robin Schön, Daniel Kienzle, Rainer Lienhart
Global Attention-Guided Dual-Domain Point Cloud Feature Learning for Classification and Segmentation
Zihao Li, Pan Gao, Kang You, Chuan Yan, Manoranjan Paul
Segmentation of Non-Small Cell Lung Carcinomas: Introducing DRU-Net and Multi-Lens Distortion
Soroush Oskouei, Marit Valla, André Pedersen, Erik Smistad, Vibeke Grotnes Dale, Maren Høibø, Sissel Gyrid Freim Wahl, Mats Dehli Haugum, Thomas Langø, Maria Paula Ramnefjell, Lars Andreas Akslen, Gabriel Kiss, Hanne Sorger
Perspective+ Unet: Enhancing Segmentation with Bi-Path Fusion and Efficient Non-Local Attention for Superior Receptive Fields
Jintong Hu, Siyan Chen, Zhiyi Pan, Sen Zeng, Wenming Yang