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
Explainable by-design Audio Segmentation through Non-Negative Matrix Factorization and Probing
Martin Lebourdais, Théo Mariotte, Antonio Almudévar, Marie Tahon, Alfonso Ortega
A New Approach for Evaluating and Improving the Performance of Segmentation Algorithms on Hard-to-Detect Blood Vessels
João Pedro Parella, Matheus Viana da Silva, Cesar Henrique Comin
An Empirical Study on the Fairness of Foundation Models for Multi-Organ Image Segmentation
Qin Li, Yizhe Zhang, Yan Li, Jun Lyu, Meng Liu, Longyu Sun, Mengting Sun, Qirong Li, Wenyue Mao, Xinran Wu, Yajing Zhang, Yinghua Chu, Shuo Wang, Chengyan Wang
Enhancing Single-Slice Segmentation with 3D-to-2D Unpaired Scan Distillation
Xin Yu, Qi Yang, Han Liu, Ho Hin Lee, Yucheng Tang, Lucas W. Remedios, Michael E. Kim, Rendong Zhang, Shunxing Bao, Yuankai Huo, Ann Zenobia Moore, Luigi Ferrucci, Bennett A. Landman
GRU-Net: Gaussian Attention Aided Dense Skip Connection Based MultiResUNet for Breast Histopathology Image Segmentation
Ayush Roy, Payel Pramanik, Sohom Ghosal, Daria Valenkova, Dmitrii Kaplun, Ram Sarkar
Runtime Freezing: Dynamic Class Loss for Multi-Organ 3D Segmentation
James Willoughby, Irina Voiculescu
Test Time Training for Industrial Anomaly Segmentation
Alex Costanzino, Pierluigi Zama Ramirez, Mirko Del Moro, Agostino Aiezzo, Giuseppe Lisanti, Samuele Salti, Luigi Di Stefano
Background Noise Reduction of Attention Map for Weakly Supervised Semantic Segmentation
Izumi Fujimori, Masaki Oono, Masami Shishibori