Topological Uncertainty and Representations for Biomedical Image Analysis
Applied Algebraic Topology Network via YouTube
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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.
Syllabus
Chao Chen (09/13/23): Topological Uncertainty and Representations for Biomedical Image Analysis
Taught by
Applied Algebraic Topology Network