Timezone: »
Geometric alignment appears in a variety of applications, ranging from domain adaptation, optimal transport, and normalizing flows in machine learning; optical flow and learned augmentation in computer vision and deformable registration within biomedical imaging. A recurring challenge is the alignment of domains whose topology is not the same; a problem that is routinely ignored, potentially introducing bias in downstream analysis. As a first step towards solving such alignment problems, we propose an unsupervised algorithm for the detection of changes in image topology. The model is based on a conditional variational auto-encoder and detects topological changes between two images during the registration step. We account for both topological changes in the image under spatial variation and unexpected transformations. Our approach is validated on two tasks and datasets: detection of topological changes in microscopy images of cells, and unsupervised anomaly detection brain imaging.
Author Information
Per Steffen Czolbe (University of Copenhagen)
Aasa Feragen (University of Copenhagen, Denmark)
Oswin Krause (University of Copenhagen)
More from the Same Authors
-
2020 Poster: A Loss Function for Generative Neural Networks Based on Watson’s Perceptual Model »
Steffen Czolbe · Oswin Krause · Ingemar Cox · Christian Igel -
2019 Workshop: Medical Imaging meets NeurIPS »
Hervé Lombaert · Ben Glocker · Ender Konukoglu · Marleen de Bruijne · Aasa Feragen · Ipek Oguz · Jonas Teuwen -
2019 : Opening Remarks »
Hervé Lombaert · Ben Glocker · Ender Konukoglu · Marleen de Bruijne · Aasa Feragen · Ipek Oguz · Jonas Teuwen -
2016 Poster: CMA-ES with Optimal Covariance Update and Storage Complexity »
Oswin Krause · Dídac Rodríguez Arbonès · Christian Igel