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Exploring Topological Information Beyond Persistent Homology to Detect Geospatial Objects
by
Karimi, Hassan A.
, Syzdykbayev, Meirman
in
Accuracy
/ Analysis
/ Automation
/ Data analysis
/ Datasets
/ Feature extraction
/ Filters
/ Geospatial data
/ Homology
/ Hypothesis testing
/ Identification
/ Information management
/ Information processing
/ landslide
/ Landslides
/ Landslides & mudslides
/ LiDAR
/ Machine learning
/ Methods
/ Morphology
/ object detection
/ Object recognition
/ persistent homology
/ Polygons
/ Qualitative analysis
/ Remote sensing
/ Satellites
/ Spatial data
/ TDA
/ Topography
/ Topology
2024
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Exploring Topological Information Beyond Persistent Homology to Detect Geospatial Objects
by
Karimi, Hassan A.
, Syzdykbayev, Meirman
in
Accuracy
/ Analysis
/ Automation
/ Data analysis
/ Datasets
/ Feature extraction
/ Filters
/ Geospatial data
/ Homology
/ Hypothesis testing
/ Identification
/ Information management
/ Information processing
/ landslide
/ Landslides
/ Landslides & mudslides
/ LiDAR
/ Machine learning
/ Methods
/ Morphology
/ object detection
/ Object recognition
/ persistent homology
/ Polygons
/ Qualitative analysis
/ Remote sensing
/ Satellites
/ Spatial data
/ TDA
/ Topography
/ Topology
2024
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Do you wish to request the book?
Exploring Topological Information Beyond Persistent Homology to Detect Geospatial Objects
by
Karimi, Hassan A.
, Syzdykbayev, Meirman
in
Accuracy
/ Analysis
/ Automation
/ Data analysis
/ Datasets
/ Feature extraction
/ Filters
/ Geospatial data
/ Homology
/ Hypothesis testing
/ Identification
/ Information management
/ Information processing
/ landslide
/ Landslides
/ Landslides & mudslides
/ LiDAR
/ Machine learning
/ Methods
/ Morphology
/ object detection
/ Object recognition
/ persistent homology
/ Polygons
/ Qualitative analysis
/ Remote sensing
/ Satellites
/ Spatial data
/ TDA
/ Topography
/ Topology
2024
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Exploring Topological Information Beyond Persistent Homology to Detect Geospatial Objects
Journal Article
Exploring Topological Information Beyond Persistent Homology to Detect Geospatial Objects
2024
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Overview
Accurate detection of geospatial objects, particularly landslides, is a critical challenge in geospatial data analysis due to the complex nature of the data and the significant consequences of these events. This paper introduces an innovative topological knowledge-based (Topological KB) method that leverages the integration of topological, geometrical, and contextual information to enhance the precision of landslide detection. Topology, a fundamental branch of mathematics, explores the properties of space that are preserved under continuous transformations and focuses on the qualitative aspects of space, studying features like connectivity and exitance of loops/holes. We employed persistent homology (PH) to derive candidate polygons and applied three distinct strategies for landslide detection: without any filters, with geometrical and contextual filters, and a combination of topological with geometrical and contextual filters. Our method was rigorously tested across five different study areas. The experimental results revealed that geometrical and contextual filters significantly improved detection accuracy, with the highest F1 scores achieved when employing these filters on candidate polygons derived from PH. Contrary to our initial hypothesis, the addition of topological information to the detection process did not yield a notable increase in accuracy, suggesting that the initial topological features extracted through PH suffices for accurate landslide characterization. This study advances the field of geospatial object detection by demonstrating the effectiveness of combining geometrical and contextual information and provides a robust framework for accurately mapping landslide susceptibility.
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