Characterising the Thematic Content of Image Pixels with Topologically Structured Clustering
The location of a pixel in feature space is a function of its thematic composition. The latter is central to an image classification analysis, notably as an input (e.g., training data for a supervised classifier) and/or an output (e.g., predicted class label). Whether as an input to or output from a...
Hovedforfatter: | Giles M. Foody |
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Format: | Article |
Sprog: | English |
Udgivet: |
MDPI AG
2025-01-01
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Serier: | Remote Sensing |
Fag: | |
Online adgang: | https://www.mdpi.com/2072-4292/17/1/130 |
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