Localized Persistent Homologies for more Effective Deep Learning

10/12/2021
by   Doruk Öner, et al.
0

Persistent Homologies have been successfully used to increase the performance of deep networks trained to detect curvilinear structures and to improve the topological quality of the results. However, existing methods are very global and ignore the location of topological features. In this paper, we introduce an approach that relies on a new filtration function to account for location during network training. We demonstrate experimentally on 2D images of roads and 3D image stacks of neuronal processes that networks trained in this manner are better at recovering the topology of the curvilinear structures they extract.

READ FULL TEXT

page 2

page 5

page 6

page 12

page 13

page 14

research
05/29/2019

A Topology Layer for Machine Learning

Topology applied to real world data using persistent homology has starte...
research
02/18/2019

Persistent entropy: a scale-invariant topological statistic for analyzing cell arrangements

In this work, we explain how to use computational topology for detecting...
research
07/09/2022

Rethinking Persistent Homology for Visual Recognition

Persistent topological properties of an image serve as an additional des...
research
06/27/2018

A Topological Regularizer for Classifiers via Persistent Homology

Regularization plays a crucial role in supervised learning. Most existin...
research
07/14/2022

Enforcing connectivity of 3D linear structures using their 2D projections

Many biological and medical tasks require the delineation of 3D curvilin...
research
06/30/2023

ReLU Neural Networks, Polyhedral Decompositions, and Persistent Homolog

A ReLU neural network leads to a finite polyhedral decomposition of inpu...
research
06/27/2018

TopoReg: A Topological Regularizer for Classifiers

Regularization plays a crucial role in supervised learning. A successful...

Please sign up or login with your details

Forgot password? Click here to reset