Automatic Segmentation
Automatic segmentation aims to computationally identify and delineate specific regions of interest within images, streamlining analysis across diverse fields. Current research heavily utilizes deep learning models, particularly U-Net and its variants, along with transformer-based architectures like Swin UNETR and the Segment Anything Model (SAM), often incorporating techniques like semi-supervised learning and prompt engineering to improve accuracy and efficiency. This technology significantly impacts various domains, from medical image analysis (e.g., organ segmentation for radiotherapy planning) and remote sensing (e.g., infrastructure mapping) to materials science (e.g., analyzing additive manufacturing processes), accelerating research and improving diagnostic capabilities.
Papers
Defect detection and segmentation in X-Ray images of magnesium alloy castings using the Detectron2 framework
Francisco Javier Yagüe, Jose Francisco Diez-Pastor, Pedro Latorre-Carmona, Cesar Ignacio Garcia Osorio
Using Multi-scale SwinTransformer-HTC with Data augmentation in CoNIC Challenge
Chia-Yen Lee, Hsiang-Chin Chien, Ching-Ping Wang, Hong Yen, Kai-Wen Zhen, Hong-Kun Lin
Towards A Device-Independent Deep Learning Approach for the Automated Segmentation of Sonographic Fetal Brain Structures: A Multi-Center and Multi-Device Validation
Abhi Lad, Adithya Narayan, Hari Shankar, Shefali Jain, Pooja Punjani Vyas, Divya Singh, Nivedita Hegde, Jagruthi Atada, Jens Thang, Saw Shier Nee, Arunkumar Govindarajan, Roopa PS, Muralidhar V Pai, Akhila Vasudeva, Prathima Radhakrishnan, Sripad Krishna Devalla