Title:
Geometric graph-based methods for high dimensional data
Abstract:
We present new methods for segmentation of large datasets with graph based structure.
The method combines ideas from classical nonlinear PDE-based image segmentation with
fast and accessible linear algebra methods for computing information about the spectrum
of the graph Laplacian. The goal of the algorithms is to solve semi-supervised and unsupervised
graph cut optimization problems. I will present results for image processing applications such
as image labeling and hyperspectral video segmentation, and results from machine learning and
community detection in social networks, including modularity optimization posed as a graph
total variation minimization problem.
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