How to Identify Good Superpixels for Deforestation Detection on Tropical Rainforests
Isabela Borlido, Eduardo Bouhid, Victor Sundermann, Hugo, Resende, Alvaro Luiz Fazenda, Fabio Faria, Silvio Jamil F., Guimar\~aes

TL;DR
This paper evaluates 16 superpixel segmentation methods on satellite images to identify the most effective for deforestation detection in tropical rainforests, linking segmentation quality with detection performance.
Contribution
It provides a comprehensive assessment of superpixel methods specifically for remote sensing deforestation detection, highlighting the best trade-offs for this application.
Findings
ERS, GMMSP, and DISF perform best on different datasets.
Superpixel methods with better trade-offs are more suitable for deforestation detection.
Certain superpixel methods improve classification accuracy in satellite imagery.
Abstract
The conservation of tropical forests is a topic of significant social and ecological relevance due to their crucial role in the global ecosystem. Unfortunately, deforestation and degradation impact millions of hectares annually, requiring government or private initiatives for effective forest monitoring. However, identifying deforested regions in satellite images is challenging due to data imbalance, image resolution, low-contrast regions, and occlusion. Superpixel segmentation can overcome these drawbacks, reducing workload and preserving important image boundaries. However, most works for remote sensing images do not exploit recent superpixel methods. In this work, we evaluate 16 superpixel methods in satellite images to support a deforestation detection system in tropical forests. We also assess the performance of superpixel methods for the target task, establishing a relationship…
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Taxonomy
TopicsRemote Sensing in Agriculture · Advanced Image Fusion Techniques · Remote-Sensing Image Classification
MethodsPrincipal Components Analysis
