Explainable Self-Organizing Artificial Intelligence Captures Landscape Changes Correlated with Human Impact Data
John M. Wandeto, Birgitta Dresp-Langley

TL;DR
This paper introduces an explainable AI method using self-organizing maps to detect and analyze landscape changes linked to human impact, enabling early awareness and decision-making.
Contribution
It presents a novel unsupervised AI approach that combines SOM-based image analysis with demographic data to quantify and correlate landscape changes with human activities.
Findings
SOM quantization error effectively detects landscape changes.
Significant correlation between landscape changes and demographic data.
Method applied successfully to urban regions in Las Vegas County.
Abstract
Novel methods of analysis are needed to help advance our understanding of the intricate interplay between landscape changes, population dynamics, and sustainable development. Self organized machine learning has been highly successful in the analysis of visual data the human expert eye may not be able to see. Thus, subtle but significant changes in fine visual detail in images relating to trending alterations in natural or urban landscapes may remain undetected. In the course of time, such changes may be the cause or the consequence of measurable human impact. Capturing such change in imaging data as early as possible can make critical information readily available to citizens, professionals and policymakers. This promotes change awareness, and facilitates early decision making for action. Here, we use unsupervised Artificial Intelligence (AI) that exploits principles of self-organized…
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Taxonomy
TopicsExplainable Artificial Intelligence (XAI) · Scientific Computing and Data Management
