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1
Intro
2
Outline
3
Gray-scale images
4
Persistent Homology
5
The Space of Persistence Diagrams
6
Gaussian Persistence Curves
7
Benefits of Persistence Curves
8
Orbits Classification (Synthetic Data)
9
Data generation
10
Texture Classification: KTH-TIPS2b
11
Skin Lesion Classification: The Data
12
Skin Lesion Classification: The Model
13
Skin Lesion Classification: Results
14
Time Series Classification: The Data
15
Time Series Classification: Metrics
16
Time Series Classification: PC based distance?
17
Time Series Classification: Ensemble Metric
18
Time Series Classification: Results
Description:
Explore a canonical framework for summarizing persistence diagrams in this 59-minute lecture from the Applied Algebraic Topology Network. Delve into the Persistence Curve Framework, a novel approach to transforming persistence diagrams for compatibility with machine learning algorithms. Learn about the framework's definition, theoretical foundations including stability and stochastic convergence, and its applications in texture analysis, time series classification, and skin lesion analysis. Discover how this framework subsumes other summary functions like persistence landscapes and offers benefits for topological data analysis. Examine practical implementations through case studies on orbit classification, texture classification using KTH-TIPS2b dataset, skin lesion classification, and time series classification with various metrics and ensemble approaches.

A Canonical Framework for Summarizing Persistence Diagrams

Applied Algebraic Topology Network
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