Segmentation Quality

Segmentation quality, the accuracy and precision of partitioning images into meaningful regions, is a critical aspect of many computer vision tasks, particularly in medical imaging and autonomous driving. Current research focuses on improving segmentation quality through advancements in model architectures (e.g., transformers, convolutional networks), developing ground-truth-free evaluation methods, and incorporating uncertainty quantification to enhance reliability. These improvements are vital for advancing applications ranging from automated medical diagnosis to robust autonomous systems, where accurate and reliable segmentation is paramount for safe and effective operation.

Papers