Explore a cutting-edge approach to biomedical image analysis in this 55-minute conference talk by Chao Chen. Delve into the challenges of accurately delineating fine-scale structures from images and discover a novel method that leverages topological information for structural-level inference. Learn how discrete Morse theory is utilized to decompose input images into structural hypotheses, enabling the learning of representations and uncertainties at a structural level. Understand the advantages of this approach over traditional pixel-wise predictions, including improved topological integrity in automatic segmentation tasks and enhanced semi-automatic interactive annotation through structure-aware uncertainty. Gain insights into the potential applications of this method in advancing biomedical image analysis and facilitating more accurate and efficient image interpretation.
Topological Uncertainty and Representations for Biomedical Image Analysis
Applied Algebraic Topology Network via YouTube
Overview
Syllabus
Chao Chen (09/13/23): Topological Uncertainty and Representations for Biomedical Image Analysis
Taught by
Applied Algebraic Topology Network