Segmentation Performance
Segmentation performance, the accuracy of delineating objects or regions within images, is a critical area of research across diverse fields, aiming to improve the precision and efficiency of automated image analysis. Current research focuses on enhancing existing architectures like U-Net and incorporating transformers, large language models, and foundation models like SAM to improve segmentation accuracy, particularly in challenging domains such as medical imaging and microscopy. These advancements are crucial for improving diagnostic accuracy in healthcare, accelerating scientific discovery in various biological fields, and enabling more robust automation in numerous applications. Significant effort is also being devoted to addressing challenges like noisy labels, domain adaptation, and computational efficiency.
Papers
Prompting DirectSAM for Semantic Contour Extraction in Remote Sensing Images
Shiyu Miao, Delong Chen, Fan Liu, Chuanyi Zhang, Yanhui Gu, Shengjie Guo, Jun Zhou
Remote Sensing Image Segmentation Using Vision Mamba and Multi-Scale Multi-Frequency Feature Fusion
Yice Cao, Chenchen Liu, Zhenhua Wu, Wenxin Yao, Liu Xiong, Jie Chen, Zhixiang Huang
Metrics Revolutions: Groundbreaking Insights into the Implementation of Metrics for Biomedical Image Segmentation
Gašper Podobnik, Tomaž Vrtovec
MedVisionLlama: Leveraging Pre-Trained Large Language Model Layers to Enhance Medical Image Segmentation
Gurucharan Marthi Krishna Kumar, Aman Chadha, Janine Mendola, Amir Shmuel